Pandas dataframe, German vocabulary – select words by matching a few 3-char-grams – III

Welcome back to this mini-series of posts on how we can search words in a vocabulary with the help of a few 3-char-grams. The sought words should fulfill the condition that they fit two or three selected 3-char-grams at certain positions of a given string-token:

Pandas dataframe, German vocabulary – select words by matching a few 3-char-grams – I
Pandas dataframe, German vocabulary – select words by matching a few 3-char-grams – II

In the first post we looked at general properties of a representative German vocabulary with respect to the distribution of 3-char-gram against their position in words. In my last post we learned from some experiments that we should use 3-char-grams with some positional distance between them. This will reduce the number of matching vocabulary words to a relatively small value – mostly below 10, often even below 5. Such a small number allows for a detailed analysis of the words. The analysis for selecting the best match may, among other more complicated things, involve a character to character comparison with the original string token or a distance measure in some word vector space.

My vocabulary resides in a Pandas dataframe. Pandas is often used as a RAM based data container in the context of text analysis tasks or data preparation for machine learning. In the present article I focus on the CPU-time required to find matching vocabulary words for 100,000 different tokens with the help of two or three selected 3-char-grams. So, this is basically about the CPU-time for requests which put conditions on a few columns of a medium sized Pandas dataframe.

I will distinguish between searches for words with a length ≤ 9 characters and searches for longer words. Whilst processing the data I will also calculate the resulting average number of words in the hit list of matching words.

A simplifying approach

  • As test-tokens I pick 100,000 randomly distributed words out of my alphabetically sorted vocabulary or 100,000 words out of certain regions of the vocabulary,
  • I select two or three 3-char-grams out of each of these words,
  • I search for matching words in the vocabulary with the same 3-char-grams at their given positions within the respective word string.
  • So, our 3-char-grams for comparison are correctly written. In real data analysis experiments for string tokens of a given text collection the situation may be different – just wait for future posts. You may then have to vary the 3-char-gram positions to get a hit list at all. But even for correct 3-grams we already know from previous experiments that the hit list, understandably, often enough contains more than just one word.

    For words ≤ 9 letters we use two 3-char-grams, for longer words three 3-char-grams. We process 7 runs in each case. The runs are different
    regarding the choice of the 3-char-grams’ positions within the tokens; see the code in the sections below for the differences in the positions.

    My selections of the positions of the 3-char-grams within the word follow mainly the strategy of relatively big distances between the 3-char-grams. This strategy was the main result of the last post. We also follow another insight which we got there:
    For each token we use the length information, i.e. we work on a pre-defined slice of the dataframe containing only words of the same length as the token. (In the case of real life tokens you may have to vary the length parameters for different search attempts if you have reason to assume that the token is misspelled.)

    I perform all test runs on a relatively old i7-6700K CPU.

    Predefined slices of the vocabulary for words with a given length

    We first create slices for words of a certain length and put the addresses into a dictionary:

    # Create vocab slices for all word-lengths  
    # ~~~~~~~~~~~~~~~~~~~~~~~~~~~--------------
    b_exact_len = True
    
    li_min = []
    li_df = []
    d_df  = {}
    for i in range(4,57): 
        li_min.append(i)
    
    len_li = len(li_min)
    for i in range(0, len_li-1):
        mil = li_min[i]
        if b_exact_len: 
            df_x = dfw_uml.loc[(dfw_uml['len'] == mil)]
            df_x = df_x.iloc[:, 2:]
            li_df.append(df_x)
            key = "df_" + str(mil)
            d_df[key] = df_x
        else: 
            mal = li_min[i+1]
            df_x = dfw_uml.loc[(dfw_uml['len'] >= mil) & (dfw_uml['len']< mal)]
            df_x = df_x.iloc[:, 2:]
            li_df.append(df_x)
            key = "df_" + str(mil) + str(mal -1)
            d_df[key] = df_x
    print("Fertig: len(li_df) = ", len(li_df), " : len(d_df) = ", len(d_df))
    li_df[12].head(5)
    

    Giving e.g:

    Dataframe with words longer than 9 letters

    We then create a sub-dataframe containing words with “10 ≤ word-length < 30“. Reason: We know from a previous post that this selection covers most of the longer words in the vocabulary.

     
    #******************************************************
    # Reduce the vocab to strings in a certain length range 
    # => Build dfw_short3 for long words and dfw_short2 for short words 
    #******************************************************
    # we produce two dfw_short frames: 
    # - one for words with length >= 10  => 3-char-grams
    # - one for words with length <= 9   => 2-char-grams 
    
    # Parameters
    # ~~~~~~~~~~~
    min_3_len = 10
    max_3_len = 30
    
    min_2_len = 4
    max_2_len = 9
    
    mil_3 = min_3_len - 1 
    mal_3 = max_3_len + 1
    max_3_col = max_3_len + 4
    dfw_short3 = dfw_uml.loc[(dfw_uml.lower.str.len() > mil_3) & (dfw_uml.lower.str.len() < mal_3)]
    dfw_short3 = dfw_short3.iloc[:, 2:max_3_col]
    
    mil_2 = min_2_len - 1 
    mal_2 = max_2_len + 1
    max_2_col = max_2_len + 4
    dfw_short2 = dfw_uml.loc[(dfw_uml.lower.str.len() > mil_2) & (dfw_uml.lower.str.len() < mal_2)]
    dfw_short2 = dfw_short2.iloc[:, 2:max_2_col]
    
    print(len(dfw_short3))
    print()
    dfw_short3.head(8)
    
    

    This gives us a list of around 2.5 million words (out of 2.7 million) in “dfw_short3”. The columns are “len” (containing the length), lower (containing the lower case version of a word) and columns for 3-char-grams from position 0 to 29:

    nThe first 3-char-gram residing completely within the word is at column “gram_2”. We have used left- and right-padding 3-char-grams; see a previous post for this point.

    The corresponding “dfw_short2” for words with a length below 10 characters is much shorter; it contains around 186000 words only.

    A function to get a hit list of words matching two or three 3-char-grams

    For our experiment I use the following (quick and dirty) function get_fit_words_3_grams() to select the right slice of the vocabulary and perform the search for words matching three 3-char-grams of longer string tokens:

    def get_fit_words_3_grams(dfw, len_w, j, pos_l=-1, pos_m=-1, pos_r=-1, b_std_pos = True):
        # dfw: source df for tokens)
        # j: row position of token in dfw (not index-label)
        
        b_analysis = False
            
        try:
            dfw
        except NameError:
            print("dfw not defined ")
        
        # get token length 
        #len_w = dfw.iat[j,0]
        #word  = dfw.iat[j, 1]
        
        # get the right slice of the vocabulary with words corresponding to the length
        df_name = "df_" + str(len_w)
        df_ = d_df[df_name]
        
        if b_std_pos:
            j_l  = 2
            j_m  = math.floor(len_w/2)+1
            j_r  = len_w - 1 
            j_rm = j_m + 2 
        else:
            if pos_l==-1 or pos_m == -1 or pos_r == -1 or pos_m >= pos_r: 
                print("one or all of the positions is not defined or pos_m >= pos_r")
                sys.exit()
            j_l = pos_l
            j_m = pos_m
            j_r = pos_r
            if pos_m >= len_w+1 or pos_r >= len_w+2:
                print("Positions exceed defined positions of 3-char-grams for the token (len= ", len_w, ")") 
                sys.exit()
    
        col_l  = 'gram_' + str(j_l);  val_l  = dfw.iat[j, j_l+2]
        col_m  = 'gram_' + str(j_m);  val_m  = dfw.iat[j, j_m+2]
        col_r  = 'gram_' + str(j_r);  val_r  = dfw.iat[j, j_r+2]
        #print(len_w, ":", word, ":", j_l, ":", j_m, ":", j_r, ":", val_l, ":", val_m, ":", val_r )
    
        li_ind = df_.index[  (df_[col_r]==val_r) 
                           #& (df_[col_rm]==val_rm) 
                           & (df_[col_m]==val_m)
                           & (df_[col_l]==val_l)
                          ].to_list()
        
        if b_analysis:
            leng_li = len(li_ind)
            if leng_li >90:
                print("!!!!")
                for m in range(0, leng_li):
                    print(df_.loc[li_ind[m], 'lower'])
                print("!!!!")
            
        #print(word, ":", leng_li, ":", len_w, ":", j_l, ":", j_m, ":", j_r, ":", val_l, ":", val_m, ":", val_r)
        return len(li_ind), len_w
    
    

     
    For “b_std_pos == True” all 3-char-grams reside completely within the word with a maximum distance to each other.

    An analogous function “get_fit_words_2_grams(dfw, len_w, j, pos_l=-1, pos_r=-1, b_std_pos = True)” basically does the same but for a chosen left and a right positioned 3-char-gram, only. The latter function is to be applied for words with a length ≤ 9.

    Function to perform the test runs

    A quick and dirty function to perform the planned different test runs is

    # Check for 100,000 words, how long the index list is for conditions on three 3-gram_cols or two 3-grams 
    # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
    
    #Three 3-char-grams or two 3-char-grams? 
    b_3 = True
    
    # parameter
    num_w   = 100000
    #num_w   = 50000
    n_start = 0
    n_end   = n_start + num_w 
    
    # run type 
    b_random = True
    pos_type = 0 
    #pos_type = 1 
    #pos_type = 2 
    #pos_type = 3 
    #pos_type = 4 
    #pos_type = 5
    #pos_type = 6
    #pos_type = 7
    
    if b_3: 
        len_
    dfw = len(dfw_short3)
    else:
        len_dfw = len(dfw_short2)
        print("len dfw_short2 = ", len_dfw)
        
    if b_random: 
        random.seed()
        li_ind_w = random.sample(range(0, len_dfw), num_w)
    else: 
        li_ind_w = list(range(n_start, n_end, 1))
        
    #print(li_ind_w) 
    
    if n_start+num_w > len_dfw:
        print("Error: wrong choice of params ")
        sys.exit
    
    ay_inter_lilen = np.zeros((num_w,), dtype=np.int16)
    ay_inter_wolen = np.zeros((num_w,), dtype=np.int16)
    
    v_start_time = time.perf_counter()
    n = 0 
    for i in range(0, num_w):
        ind = li_ind_w[i]
        if b_3:
            leng_w = dfw_short3.iat[ind,0]
        else:
            leng_w = dfw_short2.iat[ind,0]
            
        #print(ind, leng_w)
        
        # adapt pos_l, pos_m, pos_r
        # ************************
        if pos_type == 1:
            pos_l = 3
            pos_m = math.floor(leng_w/2)+1
            pos_r = leng_w - 1
        elif pos_type == 2:
            pos_l = 2
            pos_m = math.floor(leng_w/2)+1
            pos_r = leng_w - 2
        elif pos_type == 3:
            pos_l = 4
            pos_m = math.floor(leng_w/2)+2
            pos_r = leng_w - 1
        elif pos_type == 4:
            pos_l = 2
            pos_m = math.floor(leng_w/2)
            pos_r = leng_w - 3
        elif pos_type == 5:
            pos_l = 5
            pos_m = math.floor(leng_w/2)+2
            pos_r = leng_w - 1
        elif pos_type == 6:
            pos_l = 2
            pos_m = math.floor(leng_w/2)
            pos_r = leng_w - 4
        elif pos_type == 7:
            pos_l = 3
            pos_m = math.floor(leng_w/2)
            pos_r = leng_w - 2
       
        # 3-gram check 
        if b_3:
            if pos_type == 0: 
                leng, lenw = get_fit_words_3_grams(dfw_short3, leng_w, ind, 0, 0, 0, True)
            else: 
                leng, lenw = get_fit_words_3_grams(dfw_short3, leng_w, ind, pos_l, pos_m, pos_r, False)
        else:
            if pos_type == 0: 
                leng, lenw = get_fit_words_2_grams(dfw_short2, leng_w, ind, 0, 0, True)
            else: 
                leng, lenw = get_fit_words_2_grams(dfw_short2, leng_w, ind, pos_l, pos_r, False)
        
        
        ay_inter_lilen[n] = leng
        ay_inter_wolen[n] = lenw
        #print (leng)
        n += 1
    v_end_time = time.perf_counter()
    
    cpu_time   = v_end_time - v_start_time
    num_tokens = len(ay_inter_lilen)
    mean_hits  = ay_inter_lilen.mean()
    max_hits   = ay_inter_lilen.max()
    
    if b_random:
        print("cpu : ", "{:.2f}".format(cpu_time), " :: tokens =", num_tokens, 
              " :: mean =", "{:.2f}".format(mean_hits), ":: max =", "{:.2f}".format(max_hits) )
    else:
        print("n_start =", n_start, " :: cpu : ", "{:.2f}".format(cpu_time), ":: tokens =", num_tokens, 
          ":: mean =", "{:.2f}".format(mean_hits), ":: max =", "{:.2f}".format(max_hits) )
    print()
    print(ay_inter_lilen)
    

     

    Test runs for words with a length ≥ 10 and three 3-char-grams

    Pandas runs per default on just one CPU core. Typical run times are around 76 secs depending a bit on the background load on my Linux PC. Outputs for 3 consecutive runs for “b_random = True” runs and different “pos_type”-values and are

    “b_random = True” and “pos_type = 0”

         
    cpu :  75.82  :: tokens = 100000  :: mean = 1.25 :: max = 91.00
    cpu :  75.40  :: tokens = 100000  :: mean = 1.25 :: max = 91.00
    cpu :  75.43  :: tokens = 100000  :: mean = 1.25 :: max = 91.00
    

    The average value “mean” for the length of the hit list is quite small. But there obviously are a few tokens for which the hit list is quite long (max-value > 90). We shall see below that the surprisingly large value of the maximum is only due to words in two specific regions of the vocabulary.

    The next section for “pos_type = 1” shows a better behavior:

    “b_random = True” and “pos_type = 1”
    n

    cpu :  75.23  :: tokens = 100000  :: mean = 1.18 :: max = 27.00
    cpu :  76.39  :: tokens = 100000  :: mean = 1.18 :: max = 24.00
    cpu :  75.95  :: tokens = 100000  :: mean = 1.17 :: max = 27.00
    

    The next position variation again suffers from words in the same regions of the vocabulary where we got problems already for pos_type = 0:

    “b_random = True” and “pos_type = 2”

    cpu :  75.07  :: tokens = 100000  :: mean = 1.28 :: max = 52.00
    cpu :  75.57  :: tokens = 100000  :: mean = 1.28 :: max = 52.00
    cpu :  75.78  :: tokens = 100000  :: mean = 1.28 :: max = 52.00
    

    The next positional variation shows a much lower max-value; the mean value is convincing:

    “b_random = True” and “pos_type = 3”

    cpu :  74.70  :: tokens = 100000  :: mean = 1.21 :: max = 23.00
    cpu :  74.78  :: tokens = 100000  :: mean = 1.22 :: max = 23.00
    cpu :  74.48  :: tokens = 100000  :: mean = 1.22 :: max = 24.00
    
    

    “b_random = True” and “pos_type = 4”

    cpu :  75.18  :: tokens = 100000  :: mean = 1.27 :: max = 52.00
    cpu :  75.45  :: tokens = 100000  :: mean = 1.26 :: max = 52.00
    cpu :  74.65  :: tokens = 100000  :: mean = 1.27 :: max = 52.00
    

    For “pos_type = 5” we get again worse results for the average values:

    “b_random = True” and “pos_type = 5”

    cpu :  74.21  :: tokens = 100000  :: mean = 1.70 :: max = 49.00
    cpu :  74.95  :: tokens = 100000  :: mean = 1.71 :: max = 49.00
    cpu :  74.28  :: tokens = 100000  :: mean = 1.70 :: max = 49.00
    

    “b_random = True” and “pos_type = 6”

    cpu :  74.21  :: tokens = 100000  :: mean = 1.49 :: max = 31.00
    cpu :  74.16  :: tokens = 100000  :: mean = 1.49 :: max = 28.00
    cpu :  74.21  :: tokens = 100000  :: mean = 1.50 :: max = 31.00
    

    “b_random = True” and “pos_type = 7”

    cpu :  75.02  :: tokens = 100000  :: mean = 1.28 :: max = 34.00
    cpu :  74.19  :: tokens = 100000  :: mean = 1.28 :: max = 34.00
    cpu :  73.56  :: tokens = 100000  :: mean = 1.28 :: max = 34.00
    

    The data for the mean number of matching words are overall consistent with our general considerations and observations in the previous post of this article series. The CPU-times are very reasonable – even if we had to perform 5 different 3-char-gram requests per token we could do this within 6,5 to 7 minutes.

    A bit worrying is the result for the maximum of the hit-list length. The next section will show that the max-values above stem from some words in two distinct sections of the vocabulary.

    Data for certain regions of the vocabulary

    It is always reasonable to look a bit closer at different regions of the vocabulary. Therefore, we repeat some runs – but this time not for random data, but for 100,000 tokens following a certain start-position in the alphabetically sorted vocabulary:

    “b_random = False” and “pos_type = 0” and num_w = 50,000

    n_start = 0       :: tokens = 50000 :: mean = 1.10 :: max = 10
    n_start = 50000   :: tokens = 50000 :: mean = 1.15 :: max = 14
    n_start = 100000  :: tokens = 50000 :: mean = 1.46 :: max = 26
    n_start = 150000  :: tokens = 50000 :: mean = 1.25 :: max = 26
    n_start = 200000  :: tokens = 50000 :: mean = 1.30 :: max = 14
    n_start = 250000  :: tokens = 50000 :: mean = 1.15 :: max = 20
    n_start = 300000  :: tokens = 50000 :: mean = 1.10 :: max = 13
    n_start = 350000  :: tokens = 50000 :: mean = 1.07 :: max = 6
    n_start = 400000  :: tokens = 50000 :: mean = 1.11 :: max = 12
    n_start = 450000  :: tokens = 50000 :: mean = 1.28 :: max = 14
    n_start = 500000  :: tokens = 50000 :: mean = 1.38 :: max = 20
    n_start = 550000  :: tokens = 50000 :: mean = 1.12 :: max = 15
    n_start = 600000  :: tokens = 50000 :: mean = 1.
    11 :: max = 11
    n_start = 650000  :: tokens = 50000 :: mean = 1.18 :: max = 16
    n_start = 700000  :: tokens = 50000 :: mean = 1.12 :: max = 17
    n_start = 750000  :: tokens = 50000 :: mean = 1.20 :: max = 19
    n_start = 800000  :: tokens = 50000 :: mean = 1.32 :: max = 21
    n_start = 850000  :: tokens = 50000 :: mean = 1.13 :: max = 13
    n_start = 900000  :: tokens = 50000 :: mean = 1.11 :: max = 9
    n_start = 950000  :: tokens = 50000 :: mean = 1.15 :: max = 14
    n_start = 1000000 :: tokens = 50000 :: mean = 1.21 :: max = 25
    n_start = 1050000 :: tokens = 50000 :: mean = 1.08 :: max = 7
    n_start = 1100000 :: tokens = 50000 :: mean = 1.08 :: max = 10
    n_start = 1150000 :: tokens = 50000 :: mean = 1.32 :: max = 20
    n_start = 1200000 :: tokens = 50000 :: mean = 1.14 :: max = 18
    n_start = 1250000 :: tokens = 50000 :: mean = 1.15 :: max = 14
    n_start = 1300000 :: tokens = 50000 :: mean = 1.10 :: max = 12
    n_start = 1350000 :: tokens = 50000 :: mean = 1.14 :: max = 13
    n_start = 1400000 :: tokens = 50000 :: mean = 1.09 :: max = 11
    n_start = 1450000 :: tokens = 50000 :: mean = 1.12 :: max = 12
    n_start = 1500000 :: tokens = 50000 :: mean = 1.15 :: max = 33
    n_start = 1550000 :: tokens = 50000 :: mean = 1.15 :: max = 19
    n_start = 1600000 :: tokens = 50000 :: mean = 1.27 :: max = 28
    n_start = 1650000 :: tokens = 50000 :: mean = 1.10 :: max = 11
    n_start = 1700000 :: tokens = 50000 :: mean = 1.13 :: max = 15
    n_start = 1750000 :: tokens = 50000 :: mean = 1.23 :: max = 57
    n_start = 1800000 :: tokens = 50000 :: mean = 1.79 :: max = 57
    n_start = 1850000 :: tokens = 50000 :: mean = 1.44 :: max = 57
    n_start = 1900000 :: tokens = 50000 :: mean = 1.17 :: max = 20
    n_start = 1950000 :: tokens = 50000 :: mean = 1.24 :: max = 19
    n_start = 2000000 :: tokens = 50000 :: mean = 1.31 :: max = 19
    n_start = 2050000 :: tokens = 50000 :: mean = 1.08 :: max = 19
    n_start = 2100000 :: tokens = 50000 :: mean = 1.12 :: max = 17
    n_start = 2150000 :: tokens = 50000 :: mean = 1.24 :: max = 27
    n_start = 2200000 :: tokens = 50000 :: mean = 2.39 :: max = 91
    n_start = 2250000 :: tokens = 50000 :: mean = 2.76 :: max = 91
    n_start = 2300000 :: tokens = 50000 :: mean = 1.14 :: max = 10
    n_start = 2350000 :: tokens = 50000 :: mean = 1.17 :: max = 12
    n_start = 2400000 :: tokens = 50000 :: mean = 1.18 :: max = 21
    n_start = 2450000 :: tokens = 50000 :: mean = 1.16 :: max = 24
    

     
    These data are pretty consistent with the random approach. We see that there are some intervals were the hit list gets bigger – but on average not bigger than 3.

    However, we learn something important here:

    In all segments of the vocabulary there are some relatively few words for which our recipe of distanced 3-car-grams nevertheless leads to long hit lists.

    This is also reflected by the data for other positional distributions of the 3-char-grams:

    “b_random = False” and “pos_type = 1” and num_w = 50,000

    n_start = 0       :: tokens = 50000 :: mean = 1.08 :: max = 10
    n_start = 50000   :: tokens = 50000 :: mean = 1.14 :: max = 14
    n_start = 100000  :: tokens = 50000 :: mean = 1.16 :: max = 13
    n_start = 150000  :: tokens = 50000 :: mean = 1.17 :: max = 16
    n_start = 200000  :: tokens = 50000 :: mean = 1.24 :: max = 15
    n_start = 250000  :: tokens = 50000 :: mean = 1.15 :: max = 20
    n_start = 300000  :: tokens = 50000 :: mean = 1.12 :: max = 12
    n_start = 350000  :: tokens = 50000 :: mean = 1.13 :: max = 13
    n_start = 400000  :: tokens = 50000 :: mean = 1.13 :: max = 18
    n_start = 450000  :: tokens = 50000 :: mean = 1.12 :: max = 10
    n_start = 500000  :: tokens = 50000 :: mean = 1.20 :: max = 18
    n_start = 550000  :: tokens = 50000 :: mean = 1.15 :: max = 19
    n_start = 600000  :: tokens = 50000 :: mean = 1.13 :: max = 14
    n_start = 650000  :: tokens = 50000 :: 
    mean = 1.17 :: max = 18
    n_start = 700000  :: tokens = 50000 :: mean = 1.15 :: max = 12
    n_start = 750000  :: tokens = 50000 :: mean = 1.20 :: max = 16
    n_start = 800000  :: tokens = 50000 :: mean = 1.30 :: max = 21
    n_start = 850000  :: tokens = 50000 :: mean = 1.13 :: max = 13
    n_start = 900000  :: tokens = 50000 :: mean = 1.14 :: max = 13
    n_start = 950000  :: tokens = 50000 :: mean = 1.16 :: max = 14
    n_start = 1000000 :: tokens = 50000 :: mean = 1.22 :: max = 25
    n_start = 1050000 :: tokens = 50000 :: mean = 1.12 :: max = 14
    n_start = 1100000 :: tokens = 50000 :: mean = 1.11 :: max = 12
    n_start = 1150000 :: tokens = 50000 :: mean = 1.24 :: max = 16
    n_start = 1200000 :: tokens = 50000 :: mean = 1.14 :: max = 18
    n_start = 1250000 :: tokens = 50000 :: mean = 1.25 :: max = 15
    n_start = 1300000 :: tokens = 50000 :: mean = 1.16 :: max = 15
    n_start = 1350000 :: tokens = 50000 :: mean = 1.17 :: max = 14
    n_start = 1400000 :: tokens = 50000 :: mean = 1.10 :: max = 10
    n_start = 1450000 :: tokens = 50000 :: mean = 1.16 :: max = 21
    n_start = 1500000 :: tokens = 50000 :: mean = 1.18 :: max = 33
    n_start = 1550000 :: tokens = 50000 :: mean = 1.17 :: max = 20
    n_start = 1600000 :: tokens = 50000 :: mean = 1.15 :: max = 14
    n_start = 1650000 :: tokens = 50000 :: mean = 1.16 :: max = 12
    n_start = 1700000 :: tokens = 50000 :: mean = 1.17 :: max = 15
    n_start = 1750000 :: tokens = 50000 :: mean = 1.16 :: max = 12
    n_start = 1800000 :: tokens = 50000 :: mean = 1.20 :: max = 14
    n_start = 1850000 :: tokens = 50000 :: mean = 1.17 :: max = 13
    n_start = 1900000 :: tokens = 50000 :: mean = 1.17 :: max = 20
    n_start = 1950000 :: tokens = 50000 :: mean = 1.07 :: max = 11
    n_start = 2000000 :: tokens = 50000 :: mean = 1.13 :: max = 15
    n_start = 2050000 :: tokens = 50000 :: mean = 1.10 :: max = 8
    n_start = 2100000 :: tokens = 50000 :: mean = 1.15 :: max = 17
    n_start = 2150000 :: tokens = 50000 :: mean = 1.27 :: max = 27
    n_start = 2200000 :: tokens = 50000 :: mean = 1.47 :: max = 24
    n_start = 2250000 :: tokens = 50000 :: mean = 1.34 :: max = 22
    n_start = 2300000 :: tokens = 50000 :: mean = 1.18 :: max = 12
    n_start = 2350000 :: tokens = 50000 :: mean = 1.19 :: max = 14
    n_start = 2400000 :: tokens = 50000 :: mean = 1.25 :: max = 21
    n_start = 2450000 :: tokens = 50000 :: mean = 1.17 :: max = 25
    

     

    “b_random = False” and “pos_type = 2” and num_w = 50,000

    n_start = 0       :: tokens = 50000 :: mean = 1.25 :: max = 11
    n_start = 50000   :: tokens = 50000 :: mean = 1.25 :: max = 8
    n_start = 100000  :: tokens = 50000 :: mean = 1.50 :: max = 18
    n_start = 150000  :: tokens = 50000 :: mean = 1.25 :: max = 18
    n_start = 200000  :: tokens = 50000 :: mean = 1.36 :: max = 15
    n_start = 250000  :: tokens = 50000 :: mean = 1.19 :: max = 13
    n_start = 300000  :: tokens = 50000 :: mean = 1.15 :: max = 7
    n_start = 350000  :: tokens = 50000 :: mean = 1.15 :: max = 6
    n_start = 400000  :: tokens = 50000 :: mean = 1.18 :: max = 9
    n_start = 450000  :: tokens = 50000 :: mean = 1.36 :: max = 15
    n_start = 500000  :: tokens = 50000 :: mean = 1.39 :: max = 14
    n_start = 550000  :: tokens = 50000 :: mean = 1.20 :: max = 15
    n_start = 600000  :: tokens = 50000 :: mean = 1.16 :: max = 6
    n_start = 650000  :: tokens = 50000 :: mean = 1.21 :: max = 8
    n_start = 700000  :: tokens = 50000 :: mean = 1.18 :: max = 8
    n_start = 750000  :: tokens = 50000 :: mean = 1.27 :: max = 12
    n_start = 800000  :: tokens = 50000 :: mean = 1.32 :: max = 13
    n_start = 850000  :: tokens = 50000 :: mean = 1.18 :: max = 8
    n_start = 900000  :: tokens = 50000 :: mean = 1.17 :: max = 8
    n_start = 950000  :: tokens = 50000 :: mean = 1.25 :: max = 10
    n_start = 1000000 :: tokens = 50000 :: mean = 1.22 :: max = 11
    n_start = 1050000 :: tokens = 50000 :: mean = 1.15 :: max = 8
    n_start = 1100000 :: tokens = 50000 :: mean = 1.15 :: max = 6
    r
    n_start = 1150000 :: tokens = 50000 :: mean = 1.29 :: max = 15
    n_start = 1200000 :: tokens = 50000 :: mean = 1.17 :: max = 7
    n_start = 1250000 :: tokens = 50000 :: mean = 1.17 :: max = 8
    n_start = 1300000 :: tokens = 50000 :: mean = 1.16 :: max = 9
    n_start = 1350000 :: tokens = 50000 :: mean = 1.18 :: max = 8
    n_start = 1400000 :: tokens = 50000 :: mean = 1.17 :: max = 8
    n_start = 1450000 :: tokens = 50000 :: mean = 1.17 :: max = 7
    n_start = 1500000 :: tokens = 50000 :: mean = 1.17 :: max = 9
    n_start = 1550000 :: tokens = 50000 :: mean = 1.17 :: max = 7
    n_start = 1600000 :: tokens = 50000 :: mean = 1.31 :: max = 24
    n_start = 1650000 :: tokens = 50000 :: mean = 1.18 :: max = 9
    n_start = 1700000 :: tokens = 50000 :: mean = 1.17 :: max = 13
    n_start = 1750000 :: tokens = 50000 :: mean = 1.26 :: max = 21
    n_start = 1800000 :: tokens = 50000 :: mean = 1.70 :: max = 21
    n_start = 1850000 :: tokens = 50000 :: mean = 1.43 :: max = 21
    n_start = 1900000 :: tokens = 50000 :: mean = 1.19 :: max = 10
    n_start = 1950000 :: tokens = 50000 :: mean = 1.30 :: max = 11
    n_start = 2000000 :: tokens = 50000 :: mean = 1.33 :: max = 11
    n_start = 2050000 :: tokens = 50000 :: mean = 1.16 :: max = 8
    n_start = 2100000 :: tokens = 50000 :: mean = 1.17 :: max = 9
    n_start = 2150000 :: tokens = 50000 :: mean = 1.41 :: max = 20
    n_start = 2200000 :: tokens = 50000 :: mean = 2.08 :: max = 52
    n_start = 2250000 :: tokens = 50000 :: mean = 2.27 :: max = 52
    n_start = 2300000 :: tokens = 50000 :: mean = 1.21 :: max = 11
    n_start = 2350000 :: tokens = 50000 :: mean = 1.21 :: max = 10
    n_start = 2400000 :: tokens = 50000 :: mean = 1.21 :: max = 9
    n_start = 2450000 :: tokens = 50000 :: mean = 1.30 :: max = 18
    

     

    “b_random = False” and “pos_type = 3” and num_w = 50,000

    n_start = 0       :: tokens = 50000 :: mean = 1.23 :: max = 23
    n_start = 50000   :: tokens = 50000 :: mean = 1.25 :: max = 17
    n_start = 100000  :: tokens = 50000 :: mean = 1.16 :: max = 17
    n_start = 150000  :: tokens = 50000 :: mean = 1.22 :: max = 15
    n_start = 200000  :: tokens = 50000 :: mean = 1.22 :: max = 17
    n_start = 250000  :: tokens = 50000 :: mean = 1.18 :: max = 11
    n_start = 300000  :: tokens = 50000 :: mean = 1.27 :: max = 23
    n_start = 350000  :: tokens = 50000 :: mean = 1.29 :: max = 23
    n_start = 400000  :: tokens = 50000 :: mean = 1.14 :: max = 11
    n_start = 450000  :: tokens = 50000 :: mean = 1.18 :: max = 17
    n_start = 500000  :: tokens = 50000 :: mean = 1.16 :: max = 15
    n_start = 550000  :: tokens = 50000 :: mean = 1.26 :: max = 17
    n_start = 600000  :: tokens = 50000 :: mean = 1.20 :: max = 13
    n_start = 650000  :: tokens = 50000 :: mean = 1.10 :: max = 9
    n_start = 700000  :: tokens = 50000 :: mean = 1.20 :: max = 17
    n_start = 750000  :: tokens = 50000 :: mean = 1.17 :: max = 17
    n_start = 800000  :: tokens = 50000 :: mean = 1.28 :: max = 19
    n_start = 850000  :: tokens = 50000 :: mean = 1.15 :: max = 15
    n_start = 900000  :: tokens = 50000 :: mean = 1.19 :: max = 11
    n_start = 950000  :: tokens = 50000 :: mean = 1.19 :: max = 13
    n_start = 1000000 :: tokens = 50000 :: mean = 1.24 :: max = 24
    n_start = 1050000 :: tokens = 50000 :: mean = 1.17 :: max = 10
    n_start = 1100000 :: tokens = 50000 :: mean = 1.29 :: max = 23
    n_start = 1150000 :: tokens = 50000 :: mean = 1.18 :: max = 13
    n_start = 1200000 :: tokens = 50000 :: mean = 1.18 :: max = 16
    n_start = 1250000 :: tokens = 50000 :: mean = 1.38 :: max = 23
    n_start = 1300000 :: tokens = 50000 :: mean = 1.30 :: max = 23
    n_start = 1350000 :: tokens = 50000 :: mean = 1.21 :: max = 15
    n_start = 1400000 :: tokens = 50000 :: mean = 1.21 :: max = 23
    n_start = 1450000 :: tokens = 50000 :: mean = 1.23 :: max = 12
    n_start = 1500000 :: tokens = 50000 :: mean = 1.21 :: max = 13
    n_start = 1550000 :: tokens = 50000 :: mean = 1.22 :: max = 12
    n_start = 1600000 :: 
    tokens = 50000 :: mean = 1.12 :: max = 13
    n_start = 1650000 :: tokens = 50000 :: mean = 1.27 :: max = 16
    n_start = 1700000 :: tokens = 50000 :: mean = 1.23 :: max = 15
    n_start = 1750000 :: tokens = 50000 :: mean = 1.26 :: max = 11
    n_start = 1800000 :: tokens = 50000 :: mean = 1.08 :: max = 7
    n_start = 1850000 :: tokens = 50000 :: mean = 1.11 :: max = 12
    n_start = 1900000 :: tokens = 50000 :: mean = 1.26 :: max = 23
    n_start = 1950000 :: tokens = 50000 :: mean = 1.06 :: max = 9
    n_start = 2000000 :: tokens = 50000 :: mean = 1.11 :: max = 15
    n_start = 2050000 :: tokens = 50000 :: mean = 1.16 :: max = 16
    n_start = 2100000 :: tokens = 50000 :: mean = 1.17 :: max = 13
    n_start = 2150000 :: tokens = 50000 :: mean = 1.33 :: max = 16
    n_start = 2200000 :: tokens = 50000 :: mean = 1.29 :: max = 24
    n_start = 2250000 :: tokens = 50000 :: mean = 1.20 :: max = 17
    n_start = 2300000 :: tokens = 50000 :: mean = 1.35 :: max = 17
    n_start = 2350000 :: tokens = 50000 :: mean = 1.25 :: max = 12
    n_start = 2400000 :: tokens = 50000 :: mean = 1.26 :: max = 16
    n_start = 2450000 :: tokens = 50000 :: mean = 1.29 :: max = 13
    

     

    “b_random = False” and “pos_type = 4” and num_w = 50,000

    n_start = 0       :: tokens = 50000 :: mean = 1.25 :: max = 6
    n_start = 50000   :: tokens = 50000 :: mean = 1.27 :: max = 9
    n_start = 100000  :: tokens = 50000 :: mean = 1.43 :: max = 19
    n_start = 150000  :: tokens = 50000 :: mean = 1.22 :: max = 19
    n_start = 200000  :: tokens = 50000 :: mean = 1.33 :: max = 12
    n_start = 250000  :: tokens = 50000 :: mean = 1.22 :: max = 7
    n_start = 300000  :: tokens = 50000 :: mean = 1.17 :: max = 7
    n_start = 350000  :: tokens = 50000 :: mean = 1.17 :: max = 8
    n_start = 400000  :: tokens = 50000 :: mean = 1.21 :: max = 8
    n_start = 450000  :: tokens = 50000 :: mean = 1.32 :: max = 12
    n_start = 500000  :: tokens = 50000 :: mean = 1.36 :: max = 14
    n_start = 550000  :: tokens = 50000 :: mean = 1.22 :: max = 8
    n_start = 600000  :: tokens = 50000 :: mean = 1.18 :: max = 6
    n_start = 650000  :: tokens = 50000 :: mean = 1.23 :: max = 8
    n_start = 700000  :: tokens = 50000 :: mean = 1.21 :: max = 14
    n_start = 750000  :: tokens = 50000 :: mean = 1.29 :: max = 14
    n_start = 800000  :: tokens = 50000 :: mean = 1.31 :: max = 13
    n_start = 850000  :: tokens = 50000 :: mean = 1.19 :: max = 13
    n_start = 900000  :: tokens = 50000 :: mean = 1.17 :: max = 7
    n_start = 950000  :: tokens = 50000 :: mean = 1.26 :: max = 8
    n_start = 1000000 :: tokens = 50000 :: mean = 1.24 :: max = 11
    n_start = 1050000 :: tokens = 50000 :: mean = 1.18 :: max = 9
    n_start = 1100000 :: tokens = 50000 :: mean = 1.19 :: max = 7
    n_start = 1150000 :: tokens = 50000 :: mean = 1.27 :: max = 10
    n_start = 1200000 :: tokens = 50000 :: mean = 1.20 :: max = 7
    n_start = 1250000 :: tokens = 50000 :: mean = 1.18 :: max = 13
    n_start = 1300000 :: tokens = 50000 :: mean = 1.19 :: max = 9
    n_start = 1350000 :: tokens = 50000 :: mean = 1.20 :: max = 9
    n_start = 1400000 :: tokens = 50000 :: mean = 1.20 :: max = 8
    n_start = 1450000 :: tokens = 50000 :: mean = 1.20 :: max = 9
    n_start = 1500000 :: tokens = 50000 :: mean = 1.19 :: max = 14
    n_start = 1550000 :: tokens = 50000 :: mean = 1.20 :: max = 11
    n_start = 1600000 :: tokens = 50000 :: mean = 1.29 :: max = 11
    n_start = 1650000 :: tokens = 50000 :: mean = 1.19 :: max = 6
    n_start = 1700000 :: tokens = 50000 :: mean = 1.18 :: max = 8
    n_start = 1750000 :: tokens = 50000 :: mean = 1.21 :: max = 22
    n_start = 1800000 :: tokens = 50000 :: mean = 1.42 :: max = 33
    n_start = 1850000 :: tokens = 50000 :: mean = 1.32 :: max = 33
    n_start = 1900000 :: tokens = 50000 :: mean = 1.23 :: max = 15
    n_start = 1950000 :: tokens = 50000 :: mean = 1.25 :: max = 9
    n_start = 2000000 :: tokens = 50000 :: mean = 1.27 :: max = 10
    n_start = 2050000 :: tokens = 50000 :: mean = 1.17 :: 
    max = 10
    n_start = 2100000 :: tokens = 50000 :: mean = 1.19 :: max = 9
    n_start = 2150000 :: tokens = 50000 :: mean = 1.40 :: max = 16
    n_start = 2200000 :: tokens = 50000 :: mean = 1.82 :: max = 52
    n_start = 2250000 :: tokens = 50000 :: mean = 1.94 :: max = 52
    n_start = 2300000 :: tokens = 50000 :: mean = 1.21 :: max = 9
    n_start = 2350000 :: tokens = 50000 :: mean = 1.20 :: max = 7
    n_start = 2400000 :: tokens = 50000 :: mean = 1.24 :: max = 7
    n_start = 2450000 :: tokens = 50000 :: mean = 1.31 :: max = 16
    

     

    “b_random = False” and “pos_type = 5” and num_w = 50,000

    n_start = 0       :: tokens = 50000 :: mean = 1.73 :: max = 49
    n_start = 50000   :: tokens = 50000 :: mean = 1.59 :: max = 49
    n_start = 100000  :: tokens = 50000 :: mean = 1.91 :: max = 49
    n_start = 150000  :: tokens = 50000 :: mean = 1.99 :: max = 49
    n_start = 200000  :: tokens = 50000 :: mean = 1.46 :: max = 44
    n_start = 250000  :: tokens = 50000 :: mean = 1.74 :: max = 49
    n_start = 300000  :: tokens = 50000 :: mean = 1.94 :: max = 49
    n_start = 350000  :: tokens = 50000 :: mean = 2.00 :: max = 49
    n_start = 400000  :: tokens = 50000 :: mean = 1.47 :: max = 49
    n_start = 450000  :: tokens = 50000 :: mean = 2.04 :: max = 49
    n_start = 500000  :: tokens = 50000 :: mean = 1.80 :: max = 49
    n_start = 550000  :: tokens = 50000 :: mean = 1.76 :: max = 49
    n_start = 600000  :: tokens = 50000 :: mean = 1.83 :: max = 44
    n_start = 650000  :: tokens = 50000 :: mean = 1.43 :: max = 44
    n_start = 700000  :: tokens = 50000 :: mean = 1.77 :: max = 49
    n_start = 750000  :: tokens = 50000 :: mean = 1.43 :: max = 49
    n_start = 800000  :: tokens = 50000 :: mean = 1.50 :: max = 32
    n_start = 850000  :: tokens = 50000 :: mean = 1.71 :: max = 44
    n_start = 900000  :: tokens = 50000 :: mean = 1.68 :: max = 40
    n_start = 950000  :: tokens = 50000 :: mean = 1.74 :: max = 49
    n_start = 1000000 :: tokens = 50000 :: mean = 1.98 :: max = 49
    n_start = 1050000 :: tokens = 50000 :: mean = 1.73 :: max = 40
    n_start = 1100000 :: tokens = 50000 :: mean = 1.71 :: max = 30
    n_start = 1150000 :: tokens = 50000 :: mean = 1.32 :: max = 30
    n_start = 1200000 :: tokens = 50000 :: mean = 1.49 :: max = 49
    n_start = 1250000 :: tokens = 50000 :: mean = 1.93 :: max = 40
    n_start = 1300000 :: tokens = 50000 :: mean = 1.94 :: max = 49
    n_start = 1350000 :: tokens = 50000 :: mean = 1.67 :: max = 44
    n_start = 1400000 :: tokens = 50000 :: mean = 1.61 :: max = 37
    n_start = 1450000 :: tokens = 50000 :: mean = 1.86 :: max = 49
    n_start = 1500000 :: tokens = 50000 :: mean = 2.04 :: max = 49
    n_start = 1550000 :: tokens = 50000 :: mean = 1.60 :: max = 49
    n_start = 1600000 :: tokens = 50000 :: mean = 1.38 :: max = 34
    n_start = 1650000 :: tokens = 50000 :: mean = 1.77 :: max = 49
    n_start = 1700000 :: tokens = 50000 :: mean = 1.77 :: max = 44
    n_start = 1750000 :: tokens = 50000 :: mean = 1.79 :: max = 49
    n_start = 1800000 :: tokens = 50000 :: mean = 1.08 :: max = 16
    n_start = 1850000 :: tokens = 50000 :: mean = 1.46 :: max = 49
    n_start = 1900000 :: tokens = 50000 :: mean = 1.51 :: max = 49
    n_start = 1950000 :: tokens = 50000 :: mean = 1.31 :: max = 24
    n_start = 2000000 :: tokens = 50000 :: mean = 1.24 :: max = 29
    n_start = 2050000 :: tokens = 50000 :: mean = 1.85 :: max = 49
    n_start = 2100000 :: tokens = 50000 :: mean = 1.96 :: max = 49
    n_start = 2150000 :: tokens = 50000 :: mean = 1.66 :: max = 49
    n_start = 2200000 :: tokens = 50000 :: mean = 1.45 :: max = 40
    n_start = 2250000 :: tokens = 50000 :: mean = 1.51 :: max = 49
    n_start = 2300000 :: tokens = 50000 :: mean = 2.07 :: max = 49
    n_start = 2350000 :: tokens = 50000 :: mean = 2.01 :: max = 34
    n_start = 2400000 :: tokens = 50000 :: mean = 1.94 :: max = 34
    n_start = 2450000 :: tokens = 50000 :: mean = 1.85 :: max = 49
    

     

    pos_type = 5 shows on average
    larger maximum values; this is consistent with relatively high average values for the hit list length.

    “b_random = False” and “pos_type = 6” and num_w = 50,000

    n_start = 0       :: tokens = 50000 :: mean = 1.38 :: max = 9
    n_start = 50000   :: tokens = 50000 :: mean = 1.44 :: max = 22
    n_start = 100000  :: tokens = 50000 :: mean = 1.58 :: max = 14
    n_start = 150000  :: tokens = 50000 :: mean = 1.41 :: max = 20
    n_start = 200000  :: tokens = 50000 :: mean = 1.51 :: max = 16
    n_start = 250000  :: tokens = 50000 :: mean = 1.43 :: max = 17
    n_start = 300000  :: tokens = 50000 :: mean = 1.41 :: max = 20
    n_start = 350000  :: tokens = 50000 :: mean = 1.34 :: max = 17
    n_start = 400000  :: tokens = 50000 :: mean = 1.47 :: max = 21
    n_start = 450000  :: tokens = 50000 :: mean = 1.56 :: max = 18
    n_start = 500000  :: tokens = 50000 :: mean = 1.54 :: max = 21
    n_start = 550000  :: tokens = 50000 :: mean = 1.40 :: max = 22
    n_start = 600000  :: tokens = 50000 :: mean = 1.41 :: max = 22
    n_start = 650000  :: tokens = 50000 :: mean = 1.47 :: max = 21
    n_start = 700000  :: tokens = 50000 :: mean = 1.47 :: max = 19
    n_start = 750000  :: tokens = 50000 :: mean = 1.51 :: max = 21
    n_start = 800000  :: tokens = 50000 :: mean = 1.51 :: max = 17
    n_start = 850000  :: tokens = 50000 :: mean = 1.36 :: max = 15
    n_start = 900000  :: tokens = 50000 :: mean = 1.39 :: max = 27
    n_start = 950000  :: tokens = 50000 :: mean = 1.53 :: max = 22
    n_start = 1000000 :: tokens = 50000 :: mean = 1.45 :: max = 22
    n_start = 1050000 :: tokens = 50000 :: mean = 1.45 :: max = 16
    n_start = 1100000 :: tokens = 50000 :: mean = 1.49 :: max = 31
    n_start = 1150000 :: tokens = 50000 :: mean = 1.46 :: max = 31
    n_start = 1200000 :: tokens = 50000 :: mean = 1.55 :: max = 20
    n_start = 1250000 :: tokens = 50000 :: mean = 1.33 :: max = 14
    n_start = 1300000 :: tokens = 50000 :: mean = 1.44 :: max = 27
    n_start = 1350000 :: tokens = 50000 :: mean = 1.41 :: max = 16
    n_start = 1400000 :: tokens = 50000 :: mean = 1.43 :: max = 19
    n_start = 1450000 :: tokens = 50000 :: mean = 1.46 :: max = 20
    n_start = 1500000 :: tokens = 50000 :: mean = 1.32 :: max = 15
    n_start = 1550000 :: tokens = 50000 :: mean = 1.39 :: max = 18
    n_start = 1600000 :: tokens = 50000 :: mean = 1.52 :: max = 20
    n_start = 1650000 :: tokens = 50000 :: mean = 1.36 :: max = 17
    n_start = 1700000 :: tokens = 50000 :: mean = 1.41 :: max = 17
    n_start = 1750000 :: tokens = 50000 :: mean = 1.38 :: max = 19
    n_start = 1800000 :: tokens = 50000 :: mean = 1.80 :: max = 20
    n_start = 1850000 :: tokens = 50000 :: mean = 1.63 :: max = 25
    n_start = 1900000 :: tokens = 50000 :: mean = 1.52 :: max = 21
    n_start = 1950000 :: tokens = 50000 :: mean = 1.52 :: max = 22
    n_start = 2000000 :: tokens = 50000 :: mean = 1.53 :: max = 25
    n_start = 2050000 :: tokens = 50000 :: mean = 1.33 :: max = 14
    n_start = 2100000 :: tokens = 50000 :: mean = 1.41 :: max = 23
    n_start = 2150000 :: tokens = 50000 :: mean = 1.61 :: max = 19
    n_start = 2200000 :: tokens = 50000 :: mean = 2.03 :: max = 28
    n_start = 2250000 :: tokens = 50000 :: mean = 2.12 :: max = 28
    n_start = 2300000 :: tokens = 50000 :: mean = 1.47 :: max = 26
    n_start = 2350000 :: tokens = 50000 :: mean = 1.42 :: max = 21
    n_start = 2400000 :: tokens = 50000 :: mean = 1.50 :: max = 21
    n_start = 2450000 :: tokens = 50000 :: mean = 1.49 :: max = 22
    

     

    For pos_type == 0 typical examples for many hits are members of the following word collection. You see the common 3-char-grams at the beginning, in the middle and at the end of the words:

    verbindungsbauten, verbindungsfesten, verbindungskanten, verbindungskarten, verbindungskasten,
    verbindungsketten, verbindungsknoten, verbindungskosten, verbindungsleuten, verbindungslisten,
    verbindungsmasten, verbindungspisten, verbindungsrouten, verbindungsweiten, 
    verbindungszeiten,
    verfassungsraeten, verfassungstexten, verfassungswerten, verfolgungslisten, verfolgungsnoeten, 
    verfolgungstexten, verfolgungszeiten, verführungsküsten, vergnügungsbauten, vergnügungsbooten,
    vergnügungsfesten, vergnügungsgarten, vergnügungsgärten, verguetungskosten, verletzungsnoeten, 
    vermehrungsbauten, vermehrungsbeeten, vermehrungsgarten, vermessungsbooten, vermessungskarten,
    vermessungsketten, vermessungskosten, vermessungslatten, vermessungsposten, vermessungsseiten,
    vermietungslisten, verordnungstexten, verpackungskisten, verpackungskosten, verpackungsresten,
    verpackungstexten, versorgungsbauten, versorgungsbooten, versorgungsgarten, versorgungsgärten,
    versorgungshütten, versorgungskarten, versorgungsketten, versorgungskisten, versorgungsknoten,
    versorgungskosten, versorgungslasten, versorgungslisten, versorgungsposten, versorgungsquoten,
    versorgungsrenten, versorgungsrouten, versorgungszeiten, verteilungseliten, verteilungskarten,
    verteilungskosten, verteilungslisten, verteilungsposten, verteilungswerten, vertretungskosten,
    vertretungswerten, vertretungszeiten, vertretungsärzten, verwaltungsbauten, verwaltungseliten,
    verwaltungskarten, verwaltungsketten, verwaltungsknoten, verwaltungskonten, verwaltungskosten, 
    verwaltungslasten, verwaltungsleuten, verwaltungsposten, verwaltungsraeten, verwaltungstexten,
    verwaltungsärzten, verwendungszeiten, verwertungseliten, verwertungsketten, verwertungskosten,
    verwertungsquoten
    

    For pos_type == 5 we get the following example words with many hits:

    almbereich, altbereich, armbereich, astbereich, barbereich, baubereich, 
    biobereich, bobbereich, boxbereich, busbereich, bußbereich, dombereich,
    eckbereich, eisbereich, endbereich, erdbereich, essbereich, fußbereich,
    gasbereich, genbereich, hofbereich, hubbereich, hutbereich, hörbereich,
    kurbereich, lötbereich, nahbereich, oelbereich, ohrbereich, ostbereich,
    radbereich, rotbereich, seebereich, sehbereich, skibereich, subbereich,
    südbereich, tatbereich, tonbereich, topbereich, torbereich, totbereich,
    türbereich, vorbereich, webbereich, wegbereich, zoobereich, zugbereich,
    ökobereich
    

    Intermediate conclusion for tokens longer than 9 letters

    From what we found above something like “0 <= pos-type <= 4" and "pos_type =7" are preferable choices for the positions of the 3-char-grams in longer words. But even if we have to vary the positions a bit more, we get on average reasonably short hit lists.

    It seems, however, that we must live with relatively long hit lists for some words (mostly compounds at a certain region of the vocabulary).

    Test runs for words with a length ≤ 9 and two 3-char-grams

    The list of words with less than 10 characters comprises only around 185869 entries. So, the cpu-time required should become smaller.

    Here are some result data for runs for words with a length ≤ 9 characters:

    “b_random = True” and “pos_type = 0”

         
    cpu :  42.69  :: tokens = 100000  :: mean = 2.07 :: max = 78.00
    

    “b_random = True” and “pos_type = 1”

    cpu :  43.76  :: tokens = 100000  :: mean = 1.84 :: max = 40.00
    

    “b_random = True” and “pos_type = 2”

    cpu :  43.18  :: tokens = 100000  :: mean = 1.76 :: max = 30.00
    

    “b_random = True” and “pos_type = 3”

    cpu :  43.91  :: tokens = 100000  :: mean = 2.66 :: max = 46.00
    

    “b_random = True” and “pos_type = 4”

    cpu :  43.64  :: tokens = 100000  :: mean = 2.09 :: max = 30.00
    

    “b_random = True” and “pos_type = 5”

    cpu :  44.00  :: tokens = 100000  :: mean = 9.38 :: max = 265.00
    

    “b_random = True” and “pos_type = 6”

    cpu :  43.59  :: tokens = 100000  :: mean = 5.71 :: 
    max = 102.00
    

    “b_random = True” and “pos_type = 7”

    cpu :  43.50  :: tokens = 100000  :: mean = 2.07 :: max = 30.00
    

    You see that we should not shift the first or the last 3-char-gram to far into the middle of the word. For short tokens such a shift can lead to a full overlap of the 3-char-grams – and this obviously reduces our chances to reduce the list of hits.

    Conclusion

    In this post we continued our experiments on selecting words from a vocabulary which match some 3-char-grams at different positions of the token. We found the following:

    • The measured CPU-times for 100,000 tokens allow for multiple word searches with different positions of two or three 3-char-grams, even on a PC.
    • While we, on average, get hit lists of a length below 2 matching words there are always a few compounds which lead to significantly larger hit lists with tenths of words.
    • For tokens with a length less than 9 characters, we can work with two 3-char-grams – but we should avoid a too big overlap of the char-grams.

    These results give us some hope that we can select a reasonably short list of words from a vocabulary which match parts of misspelled tokens – e.g. with one or sometimes two letters wrongly written. Before we turn to the challenge of correcting such tokens in a new article series we close the present series with yet another post about the effect of multiprocessing on our word selection processes.

    Pandas dataframe, German vocabulary – select words by matching a few 3-char-grams – II

    In my last post

    Pandas dataframe, German vocabulary – select words by matching a few 3-char-grams – I

    I have discussed some properties of 3-char-grams of words in a German word list. (See the named post for the related structure of a Pandas dataframe (“dfw_uml”) which hosts both the word list and all corresponding 3-char-grams.) In particular I presented the distribution of the maximum and mean number of words per unique 3-char-gram against the position of the 3-char-grams inside the the words of my vocabulary.

    In the present post I want to use the very same Pandas dataframe to find German words which match two or three 3-char-grams defined at different positions inside some given strings or “tokens” of a text to be analyzed by a computer. One question in such a context is: How do we choose the 3-char-gram-positions to make the selection process effective in the sense of a short list of possible hits?

    The dataframe has in my case 2.7 million rows for individual words and up to 55 columns for the values 3-char-grams at 55 positions. In the case of short words the columns are filled by artificial 3-char-grams “###”.

    My objective and a naive approach

    Let us assume that we have a string (or “token”) of e.g. 15 characters for a (German) word. The token contains some error in the sense of a wrongly written or omitted letter. Unfortunately, our text-analysis program does not know which letter of the string is wrongly written. So it wants to find words which may fit to the general character structure. We therefore pick a few 3-grams at given positions of our token. We then want to find words which match two or three 3-char-grams at different positions of the string – hoping that we chose 3-char-grams which do not contain any error. If we get no match we try different a different combination of 3-gram-positions.

    In such a brute-force comparison process you would like to quickly pin down the number of matching words with a very limited bunch of 3-grams of the test token. The grams’ positions should be chosen such that the hit list contains a minimum of fitting words. We, therefore, can pose this problem in a different way:

    Which chosen positions or positional distances of two or three 3-char-grams inside a string token reduces the list of matching words from a vocabulary to a minimum?

    Maybe there is a theoretically well founded solution for this problem. Personally, I am too old and too lazy to analyze such problems with solid mathematical statistics. I take a shortcut and trust my guts. It seems reasonable to me that the selected 3-char-grams should be distributed across the test string with a maximum distance between them. Let us see how far we get with this naive approach.

    For the experiments discussed below I use

    • three 3-char-grams for tokens longer than 9 characters.
    • two 3-char-grams for tokens shorter than 9 letters.

    For our first tests we pick correctly written 3-char-grams of test words. This means that we take correctly written words as our test tokens. The handling of tokens with wrongly written characters will be the topic of future articles.

    Position combinations of two 3-char-grams for relatively short words

    To get some idea about the problem’s structure I first pick a test-word like “eisenbahn”. As it is a relatively short word we start working with only two 3-char-grams. My test-word is an interesting one as it is a compound of two individual words “eisen” and “bahn”. There are many other words in the German language which either contain the first or the second word. And in German we can
    add even more words to get even longer compounds. So, we would guess with some confidence that there are many hits if we chose two 3-char-grams overlapping each other or being located too close to each other. In addition we would also expect that we should use the length information about the token (or the sought words) during the selection process.

    With a stride of 1 we have exactly seven 3-char-grams which reside completely inside our test-word. This gives us 21 options to use two 3-char-grams to find matching words.

    To raise the chance for a bunch of alternative results we first look at words with up to 12 characters in our vocabulary and create a respective shortened slice of our dataframe “dfw_uml”:

    # Reduce the vocab to strings < max_len => Build dfw_short
    #*********************************
    #b_exact_length = False
    b_exact_length = True
    
    min_len = 4
    max_len = 12
    length  = 9
    
    mil = min_len - 1 
    mal = max_len + 1
    
    if b_exact_length: 
        dfw_short = dfw_uml.loc[(dfw_uml.lower.str.len() == length)]
    else:     
        dfw_short = dfw_uml.loc[(dfw_uml.lower.str.len() > mil) & (dfw_uml.lower.str.len() < mal)]
    dfw_short = dfw_short.iloc[:, 2:26]
    print(len(dfw_short))
    dfw_short.head(5)
    

    The above code allows us to choose whether we shorten the vocabulary to words with a length inside an interval or to words with a defined exact length. A quick and dirty code fragment to evaluate some statistics for all possible 21 position combinations for two 3-char-grams is the following:

    # Hits for two 3-grams distributed over 9-letter and shorter words
    # *****************************************************************
    b_full_vocab  = False # operate on the full vocabulary 
    #b_full_vocab  = True # operate on the full vocabulary 
    
    word  = "eisenbahn"
    word  = "löwenzahn"
    word  = "kellertür"
    word  = "nashorn"
    word  = "vogelart"
    
    d_col = { "col_0": "gram_2", "col_1": "gram_3", "col_2": "gram_4", "col_3": "gram_5",
              "col_4": "gram_6", "col_5": "gram_7", "col_6": "gram_8" 
            }
    d_val = {}
    for i in range(0,7):
        key_val  = "val_" + str(i)
        sl_start = i
        sl_stop  = sl_start + 3
        val = word[sl_start:sl_stop] 
        d_val[key_val] = val
    print(d_val)
    
    li_cols = [0] # list of cols to display in a final dataframe 
    
    d_num = {}
     words 
    # find matching words for all position combinations
    # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
    upper_num = len(word) - 2 
    for i in range(0,upper_num): 
        col_name1 = "col_" + str(i)
        val_name1 = "val_"  + str(i)
        col1 = d_col[col_name1]
        val1 = d_val[val_name1]
        col_name2 = ''
        val_name2 = ''
        for j in range(0,upper_num):
            if j <= i : 
                continue 
            else:
                col_name2 = "col_" + str(j)
                val_name2 = "val_"  + str(j)
                col2 = d_col[col_name2]
                val2 = d_val[val_name2]
                
                # matches ?
                if b_full_vocab:
                    li_ind = dfw_uml.index[  (dfw_uml[col1]==val1) 
                                        &    (dfw_uml[col2]==val2)
                                          ].tolist()
                else: 
                    li_ind = dfw_short.index[(dfw_short[col1]==val1) 
                                        &    (dfw_short[col2]==val2)
                                            ].tolist()
                    
                num = len(li_ind)
                key = str(i)+':'+str(j)
                d_num[key] = num
    #print("length of d_num = ", len(d_num))
    print(d_num)
    
    # bar diagram 
    fig_size = plt.rcParams["figure.figsize"]
    fig_size[0] = 12
    fig_size[1] = 6
    names  = list(d_num.keys())
    values = list(d_num.values())
    plt.bar(range(len(d_
    num)), values, tick_label=names)
    plt.xlabel("positions of the chosen two 3-grams", fontsize=14, labelpad=18)
    plt.ylabel("number of matching words", fontsize=14, labelpad=18)
    font_weight = 'bold' 
    font_weight = 'normal' 
    if b_full_vocab: 
        add_title = "\n(full vocabulary)"
    elif  (not b_full_vocab and not b_exact_length):
        add_title = "\n(reduced vocabulary)"
    else:
        add_title = "\n(only words with length = 9)"
        
    plt.title("Number of words for different position combinations of two 3-char-grams" + add_title, 
              fontsize=16, fontweight=font_weight, pad=18) 
    plt.show()
    

     
    You see that I prepared three different 9-letter words. And we can choose whether we want to find matching words of the full or of the shortened dataframe.

    The code, of course, imposes conditions on two columns of the dataframe. As we are only interested in the number of resulting words we use these conditions together with the “index()”-function of Pandas.

    Number of matching relatively short words against position combinations for two 3-char-grams

    For the full vocabulary we get the following statistics for the test-word “eisenbahn”:

    {'val_0': 'eis', 'val_1': 'ise', 'val_2': 'sen', 'val_3': 'enb', 'val_4': 'nba', 'val_5': 'bah', 'val_6': 'ahn'}
    {'0:1': 5938, '0:2': 5899, '0:3': 2910, '0:4': 2570, '0:5': 2494, '0:6': 2500, '1:2': 5901, '1:3': 2910, '1:4': 2570, '1:5': 2494, '1:6': 2500, '2:3': 3465, '2:4': 2683, '2:5': 2498, '2:6': 2509, '3:4': 4326, '3:5': 2681, '3:6': 2678, '4:5': 2836, '4:6': 2832, '5:6': 3857}
    

    Note: The first and leftmost 3-char-gram is located at position “0”, i.e. we count positions from zero. Then the last position is at position “word-length – 3”.

    The absolute numbers are much too big. But this plot already gives a clear indication that larger distances between the two 3-char-grams are better to limit the size of the result set. When we use the reduced vocabulary slice (with words shorter than 13 letters) we get

    {'0:1': 1305, '0:2': 1277, '0:3': 143, '0:4': 48, '0:5': 20, '0:6': 24, '1:2': 1279, '1:3': 143, '1:4': 48, '1:5': 20, '1:6': 24, '2:3': 450, '2:4': 125, '2:5': 23, '2:6': 31, '3:4': 634, '3:5': 58, '3:6': 55, '4:5': 76, '4:6': 72, '5:6': 263}
    

    For some combinations the resulting hit list is much shorter (< 50)! And the effect of some distance between the chosen char-grams gets much more pronounced.

    Corresponding data for the words “löwenzahn” and “kellertür” confirm the tendency:

    Test-word “löwenzahn”

    Watch the lower numbers along the y-scale!

    Test-token “kellertür”

    Using the information about the word length for optimization

    On average the above numbers are still too big for a later detailed comparative analysis with our test token – even on the reduced vocabulary. We expect an improvement by including the length information. What numbers do we get when we use a list with words having exactly the same length as the test-word?

    You find the results below:

    Test-token “eisenbahn”

    {'0:1': 158, '0:2': 155, '0:3': 16, '0:4': 6, '0:5': 1, '0:6': 3, '1:2': 155, '1:3': 16, '1:4': 6, '1:5': 1, '1:6': 3, '2:3': 83, '2:4': 37, '2:5': 3, '2:6': 9, '3:4': 182, '3:5': 17, '3:6': 17, '4:5': 22, '4:6': 22, '5:6': 109}
    

    Test-token “löwenzahn”

    {'0:1': 94, '0:2': 94, '0:3': 3, '0:4': 2, '0:5': 2, '0:6': 1, '1:2': 94, '1:3': 3, '1:4': 2, '1:5': 2, '1:6': 1, '2:3': 3, '2:4': 2, '2:5': 2, '2:6': 1, '3:4': 54, '3:5': 43, '3:6': 13, '4:5': 59, '4:6': 14, '5:6': 46}
    

    Test-token “kellertür”

    {'0:1': 14, '0:2': 13, '0:3': 13, '0:4': 5, '0:5': 1, '0:6': 1, '1:2': 61, '1:3': 24, '1:4': 5, '1:5': 1, '1:6': 2, '2:3': 36, '2:4': 8, '2:5': 1, '2:6': 3, '3:4': 12, '3:5': 1, '3:6': 1, '4:5': 17, '4:6': 17, '5:6': 17}
    

    For an even shorter word like “vogelart” and “nashorn” two 3-char-grams cover almost all of the word. But even here the number of hits is largest for neighboring 3-char-grams:

    Test-word “vogelart” (8 letters)

    {'val_0': 'vog', 'val_1': 'oge', 'val_2': 'gel', 'val_3': 'ela', 'val_4': 'lar', 'val_5': 'art', 'val_6': 'rt'}
    {'0:1': 22, '0:2': 22, '0:3': 1, '0:4': 1, '0:5': 1, '1:2': 23, '1:3': 1, '1:4': 1, '1:5': 2, '2:3': 10, '2:4': 6, '2:5': 5, '3:4': 19, '3:5': 15, '4:5': 24}
    

    Test-word “nashorn” (7 letters)

    {'val_0': 'nas', 'val_1': 'ash', 'val_2': 'sho', 'val_3': 'hor', 'val_4': 'orn', 'val_5': 'rn', 'val_6': 'n'}
    {'0:1': 1, '0:2': 1, '0:3': 1, '0:4': 1, '1:2': 1, '1:3': 1, '1:4': 1, '2:3': 3, '2:4': 2, '3:4': 26}
    

    So, as an intermediate result I would say:

    • Our naive idea about using 3-char-grams with some distance between them is pretty well confirmed for relatively small words with a length below 9 letters and two 3-char-grams.
    • We should use the length information about a test-word or token in addition to diminish the list of reasonably matching words!

    Code to investigate 3-char-gram combinations for words with more than 9 letters

    Let us now turn to longer words. Here we face a problem: The number of possibilities to choose three 3-char-grams at different positions explodes with word-length (simple combinatorics leading to the binomial coefficient). It is even difficult to present results graphically. Therefore, I had to restrict myself to gram-combinations with some reasonable distance from the beginning.

    The following code does not exclude anything and leads to problematic plots:

    # Hits for two 3-grams distributed over a 13-letter word
    # ******************************************************
    b_full_vocab  = False # operate on the full vocabulary 
    #b_full_vocab  = True # operate on the full vocabulary 
    
    #word  = "nachtwache"             # 10
    #word  = "morgennebel"            # 11
    #word  = "generalmajor"           # 12
    #word  = "gebirgskette"           # 12
    #word  = "fussballfans"           # 12
    #word  = "naturforscher"          # 13
    #word  = "frühjahrsputz"          # 13 
    #word  = "marinetaucher"          # 13
    #word  = "autobahnkreuz"          # 13 
    word  = "generaldebatte"         # 14
    #word  = "eiskunstläufer"         # 14
    #word  = "gastwirtschaft"         # 14
    #word  = "vergnügungspark"        # 15 
    #word  = "zauberkuenstler"        # 15
    #word  = "abfallentsorgung"       # 16 
    #word  = "musikveranstaltung"     # 18  
    #word  = "sicherheitsexperte"     # 18
    #word  = "literaturwissenschaft"  # 21 
    #word  = "veranstaltungskalender" # 23
    
    len_w = len(word)
    print(len_w, math.floor(len_w/2))
    
    d_col = { "col_0": "gram_2",   "col_1": "gram_3",   "col_2": "gram_4",   "col_3": "gram_5",
              "col_4": "gram_6",   "col_5": "gram_7",   "col_6": "gram_8",   "col_7": "gram_9", 
              "col_8": "gram_10",  "col_9": "gram_11",  "col_10": "gram_12", "col_11": "gram_13", 
              "col_12": "gram_14", "col_13": "gram_15", "col_14": "gram_16", "col_15": "gram_17", 
              "col_16": "gram_18", "col_17": "gram_19", "col_18": "gram_20", "col_19": "gram_21" 
            }
    d_val = {}
    
    ind_max = len_w - 2
    
    for i in range(0,ind_max):
        key_val  = "val_" + str(i)
        sl_start = i
        sl_stop  = sl_start + 3
        val = word[sl_start:sl_stop] 
        d_val[key_val] = val
    print(d_val)
    
    li_cols = [0] # list of cols to display in a final dataframe 
    
    d_num = {}
    li_permut = []
    
    # prepare 
    short
    length  = len_w
    mil = min_len - 1 
    mal = max_len + 1
    b_exact_length = True
    if b_exact_length: 
        dfw_short = dfw_uml.loc[(dfw_uml.lower.str.len() == length)]
    else:     
        dfw_short = dfw_uml.loc[(dfw_uml.lower.str.len() > mil) & (dfw_uml.lower.str.len() < mal)]
    dfw_short = dfw_short.iloc[:, 2:26]
    print(len(dfw_short))
    
    
    # find matching words for all position combinations
    # ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
    for i in range(0,ind_max): 
        for j in range(0,ind_max):
            for k in range(0,ind_max):
                if (i,j,k) in li_permut or (i==j or j==k or i==k):
                    continue
                else: 
                    col_name1 = "col_" + str(i)
                    val_name1 = "val_" + str(i)
                    col1 = d_col[col_name1]
                    val1 = d_val[val_name1]
                    col_name2 = "col_" + str(j)
                    val_name2 = "val_" + str(j)
                    col2 = d_col[col_name2]
                    val2 = d_val[val_name2]
                    col_name3 = "col_" + str(k)
                    val_name3 = "val_" + str(k)
                    col3 = d_col[col_name3]
                    val3 = d_val[val_name3]
                    li_akt_permut = list(itertools.permutations([i, j, k]))
                    li_permut = li_permut + li_akt_permut
                    #print("i,j,k = ", i, ":", j, ":", k)
                    #print(len(li_permut))
                    
                    # matches ?
                    if b_full_vocab:
                        li_ind = dfw_uml.index[  (dfw_uml[col1]==val1) 
                                            &    (dfw_uml[col2]==val2)
                                            &    (dfw_uml[col3]==val3)
                                              ].tolist()
                    else: 
                        li_ind = dfw_short.index[(dfw_short[col1]==val1) 
                                            &    (dfw_short[col2]==val2)
                                            &    (dfw_short[col3]==val3)
                                                ].tolist()
    
                    num = len(li_ind)
                    key = str(i)+':'+str(j)+':'+str(k)
                    d_num[key] = num
    print("length of d_num = ", len(d_num))
    print(d_num)
    
    # bar diagram 
    fig_size = plt.rcParams["figure.figsize"]
    fig_size[0] = 15
    fig_size[1] = 6
    names  = list(d_num.keys())
    values = list(d_num.values())
    plt.bar(range(len(d_num)), values, tick_label=names)
    plt.xlabel("positions of the chosen two 3-grams", fontsize=14, labelpad=18)
    plt.ylabel("number of matching words", fontsize=14, labelpad=18)
    font_weight = 'bold' 
    font_weight = 'normal' 
    if b_full_vocab: 
        add_title = "\n(full vocabulary)"
    elif  (not b_full_vocab and not b_exact_length):
        add_title = "\n(reduced vocabulary)"
    else:
        add_title = "\n(only words with length = " + str(len_w) + ")"
        
    plt.title("Number of words for different position combinations of two 3-char-grams" + add_title, 
              fontsize=16, fontweight=font_weight, pad=18) 
    plt.show()
    

     

    An example for the word “generaldebatte” (14 letters) gives:

    A supplemental code that reduces the set of gram position combinations significantly to larger distances could look like this:

    # Analysis for 3-char-gram combinations with larger positional distance
    # ********************************************************************
    
    hf = math.floor(len_w/2)
    
    d_l={}
    for i in range (2,26):
        d_l[i] = {}
    
    r
    for key, value in d_num.items():
        li_key = key.split(':')
        # print(len(li_key))
        i = int(li_key[0])
        j = int(li_key[1])
        k = int(li_key[2])
        l1 = int(li_key[1]) - int(li_key[0])
        l2 = int(li_key[2]) - int(li_key[1])
        le = l1 + l2 
        # print(le)
        if (len_w < 12): 
            bed1 = (l1<=1 or l2<=1)
            bed2 = (l1 <=2 or l2 <=2)
            bed3 = (((i < hf and j< hf and k< hf) or (i > hf and j> hf and k > hf)))
        if (len_w < 15): 
            bed1 = (l1<=2 or l2<=2)
            bed2 = (l1 <=3 or l2 <=3)
            bed3 = (((i < hf and j< hf and k< hf) or (i > hf and j> hf and k > hf)))
        elif (len_w <18): 
            bed1 = (l1<=3 or l2<=3)
            bed2 = (l1 <=4 or l2 <=4)
            bed3 = (((i < hf and j< hf and k< hf) or (i > hf and j> hf and k > hf)))
        else: 
            bed1 = (l1<=3 or l2<=3)
            bed2 = (l1 <=4 or l2 <=4)
            bed3 = (((i < hf and j< hf and k< hf) or (i > hf and j> hf and k > hf)))
            
        for j in range(2,26): 
            if le == j:
                if value == 0 or bed1 or ( bed2 and bed3) : 
                    continue
                else:
                    d_l[j][key] = value
    
    sum_len = 0 
    n_p = len_w -2
    for j in range(2,n_p):
        num = len(d_l[j])
        print("len = ", j, " : ", "num = ", num) 
        
    print()
    print("len_w = ", len_w, " half = ", hf)    
    
    if (len_w <= 12):
        p_start = hf 
    elif (len_w < 15):
        p_start = hf + 1
    elif len_w < 18: 
        p_start = hf + 2 
    else: 
        p_start = hf + 2 
    
        
    # Plotting 
    # ***********
    li_axa = []
    m = 0
    for i in range(p_start,n_p):
        if len(d_l[i]) == 0:
            continue
        else:
            m+=1
    print(m)
    fig_size = plt.rcParams["figure.figsize"]
    fig_size[0] = 12
    fig_size[1] = m * 5
    fig_b  = plt.figure(2)
    
    for j in range(0, m):
        li_axa.append(fig_b.add_subplot(m,1,j+1))
    
    m = 0
    for i in range(p_start,n_p):
        if len(d_l[i]) == 0:
            continue
        # bar diagram 
        names  = list(d_l[i].keys())
        values = list(d_l[i].values())
        li_axa[m].bar(range(len(d_l[i])), values, tick_label=names)
        li_axa[m].set_xlabel("positions of the 3-grams", fontsize=14, labelpad=12) 
        li_axa[m].set_ylabel("num matching words", fontsize=14, labelpad=12) 
        li_axa[m].set_xticklabels(names, fontsize=12, rotation='vertical')
        #font_weight = 'bold' 
        font_weight = 'normal' 
        if b_full_vocab: 
            add_title = " (full vocabulary)"
        elif  (not b_full_vocab and not b_exact_length):
            add_title = " (reduced vocabulary)"against position-combinations for <em>three</em> 3-char-grams</h1>
        else:
            add_title = " (word length = " + str(len_w) + ")" 
    
        li_axa[m].set_title("total distance = " + str(i) + add_title, 
                  fontsize=16, fontweight=font_weight, pad=16) 
        m += 1
        
    plt.subplots_adjust( hspace=0.7 )
    fig_b.suptitle("word :  " + word +" (" + str(len_w) +")", fontsize=24, 
                  fontweight='bold', y=0.91) 
    plt.show()
    

     

    What are the restrictions? Basically

    • we eliminate combinations with 2 neighboring 3-char-grams,
    • we eliminate 3-char-grams combinations where all 3-grams are place only on one side of the word – the left or right one,
    • we pick only 3-char-grams where the sum of the positional distances between the 3-char-grams is somewat longer than half of the token’s length.

    We vary these criteria a bit with the word length. In my opinion these criteria should produce plots, only, which show that the number of hits is reasonably small – if our basic approach is of some value.

    Number
    of matching words with more than 9 letters against position-combinations for three 3-char-grams

    The following plots cover words of different growing lengths for dataframes reduced to words with exactly the same length as the chosen token. Not too surprising, all of the words are compound words.

    **************************

    Test-token “nachtwache”

    Test-token “morgennebel”

    Test-token “generalmajor”

    Test-token “gebirgskette”

    Test-token “fussballfans”

    Test-token “naturforscher”

    Test-token “frühjahrsputz”

    Test-token “marinetaucher”

    Test-token “autobahnkreuz”

    Test-token “generaldebatte”

    Test-token “eiskunstläufer”

    Test-
    token “gastwirtschaft”

    Test-token “vergnügungspark”

    Test-token “zauberkuenstler”

    Test-token “abfallentsorgung”

    Test-token “musikveranstaltung”

    Test-token “sicherheitsexperte”

    Test-token “literaturwissenschaft”

    Test-token “veranstaltungskalender”

    **************************

    What we see is that whenever we choose 3-char-gram combinations with a relative big positional distance between them and a sum of the two distances ≥ word-length / 2 + 2 the number of matching words ogf the vocabulary is smaller than 10, very often even smaller than 5. The examples “prove” at least that choosing three (correctly written) 3-char-grams with relative big distance within a token lead to small numbers of matching vocabulary words,

    Conclusion

    One can use a few 3-char-grams within string tokens to find matching vocabulary words via a comparison of the char-grams at their respective
    position. In this article we have studied how we should choose two or three 3-char-grams within string tokens of length ≤ 9 letters or > 9 letters, respectively, if and when we want to find matching vocabulary words effectively. We found strong indications that the 3-char-grams should be chosen with a relatively big positional distance. To use neighboring 3-char-grams will lead to hit numbers which are too big for a detailed analysis.

    In the next post I will have a closer look at the required CPU-time for a word searches in a vocabulary based on 3-char-gram comparisons for a 100,000 string tokens.