NAME
   README Introduction to Ngram Statistics Package (Text-NSP)

SYNOPSIS
   This document provides a general introduction to the Ngram Statistics
   Package.

DESCRIPTION
 1. Introduction
   The Ngram Statistics Package (NSP) is a suite of programs that aids in
   analyzing Ngrams in text files. We define an Ngram as a sequence of 'n'
   tokens that occur within a window of at least 'n' tokens in the text;
   what constitutes a "token" can be defined by the user.

   In earlier versions (v0.1, v0.3, v0.4) this package was known as the
   Bigram Statistics Package (BSP). The name change reflects the widening
   scope of the package in moving beyond Bigrams to Ngrams.

   NSP consists of two core programs and three utilities:

   Program count.pl takes flat text files as input and generates a list of
   all the Ngrams that occur in those files. The Ngrams, along with their
   frequencies, are output in descending order of their frequency.

   Program statistic.pl takes as input a list of Ngrams with their
   frequencies (in the format output by count.pl) and runs a user-selected
   statistical measure of association to compute a "score" for each Ngram.
   The Ngrams, along with their scores, are output in descending order of
   this score. The statistical score computed for each Ngram can be used to
   decide whether or not there is enough evidence to reject the null
   hypothesis (that the Ngram is not a collocation) for that Ngram.

   Various utility programs are found in bin/utils/ and take as their input
   the results (output) from count.pl and/or statistic.pl.

   rank.pl takes as input two files output by statistic.pl and computes the
   Spearman's rank correlation coefficient on the Ngrams that are common to
   both files. Typically the two files should be produced by applying
   statistic.pl on the same Ngram count file but by using two different
   statistical measures. In such a scenario, the value output by rank.pl
   can be used to measure how similar these the two measures are. A value
   close to 1 would indicate that these two measures rank Ngrams in the
   same order, -1 that the two orderings are exactly opposite to each other
   and 0 that they are not related.

   kocos.pl takes as input a file output by count.pl or statistic.pl and
   uses that to identify kth order co-occurrences of a given word. A kth
   order co-occurrence of a target WORD is a word that co-occurs with a
   (k-1)th co-occurrence of the given target WORD. So A is a 2nd order
   co-occurrence of X if X occurs with B and B occurs with A. Put more
   concretely in "New York", "New" and "York" co-occur (the are 1st order
   co-occurrences). In "New Jack", "New" and "Jack" co-occur. Thus, "Jack"
   and "York" are second order co-occurrences because they both co-occur
   with "New".

   combig.pl will take the output of count.pl and find unordered counts of
   bigrams. Normally count.pl treats bigrams like "fine wine" and "wine
   fine" as distinct. combig.pl (combine bigram) will adjust the counts
   such that they do not depend on the order. So one could then go on to
   measure how much the words "fine" and "wine" are associated without
   respect to their order.

   huge-count.pl allows a user to run count.pl on much larger corpora. It
   essentially divides the whole bigrams list generated by count.pl with
   --tokenlist opition, then splits the entire bigrams list into smaller
   pieces, and then sort and merge the bigrams lists to get the final
   output. huge-count.pl also uses bin/utils/huge-split.pl,
   bin/utils/huge-sort.pl, bin/utils/huge-merge.pl and
   bin/utils/huge-delete.pl.

   This README continues with an introduction to the basic definitions of
   tokens, the tokenization process and the Ngram formation process. This
   is followed by a description of the two main programs in this suite
   (count.pl and statistic.pl) and brief notes one how one could typically
   use each of them. The programs rank.pl, kocos.pl, and combig.pl are
   described in separate READMEs in the /utils directory.

 2. Tokens
   We define a token as a contiguous sequence of characters that match one
   of a set of regular expressions. These regular expressions may be
   user-provided, or, if not provided, are assumed to be the following two
   regular expressions:

     \w+        -> this matches a contiguous sequence of alpha-numeric characters

     [\.,;:\?!] -> this matches a single punctuation mark

   For example, assume the following is a line of text:

   "the stock markets fell by 20 points today!"

   Then, using the above regular expressions, we get the following tokens:

       the       stock     markets
       fell      by        20
       points    today     !

   Now assume that the user provides the following lone regular expression:

     [a-zA-Z]+  -> this matches a contiguous sequence of alphabetic characters

   Then, we get the following tokens:

       the       stock     markets
       fell      by        points
       today

 3. The Tokenization Process:
   Given a text file and a set of regular expressions, the text is
   "tokenized", that is, broken up into tokens. To do so, the entire input
   text is considered as one long "input string" with new-line characters
   being replaced by space characters (this is the default behaviour and
   can be modified; see point 4 below). Then, the following is done:

    while the input string is non empty

       foreach regular expression r
           if r is matched by a sequence of characters starting with the first
           character in the input string...
               quit this for loop
           end if
       end foreach

       if we have a matching regular expression r
           the portion of the input string matched by r is our next token. remove
           this token from the input string.
       else
           remove the first character from the input string
       end if

    end while

  3.1 Notes:
   3.1.1. In looking for a regular expression that yields a successful
   match (in the foreach loop above), we want a regular expression that
   matches the input string starting with the first character of the input
   string. Thus, the regular expression /b/ matches the input string "be
   good" but not the input string " be good".

   3.1.2. If none of the regular expressions give a successful match, then
   the first character in the input string is removed. This character is
   considered a "non-token" and is henceforth ignored.

   3.1.3. Since the matching process (the foreach loop above) stops at the
   first match, the order in which the regular expressions are tested is
   important. The order is exactly the order in which they are provided by
   the user, or if the default regular expressions are used, the order in
   which they are listed above.

  3.2 Examples:
  3.2.1 Example 1:
   3.2.1.1. Input text:

       why's the stock falling?

   3.2.1.2. Regular expressions:

       \w+
       [\.,;:\?!]

   3.2.1.3. Resulting tokens:

       why       s         the
       stock     falling   ?

   3.2.1.4. Explanation:

   Initially our input string is the entire input text: "why's the stock
   falling?". The first token found is "why" which matches the regular
   expression /\w+/. This token is removed, and our input string becomes
   "'s the stock falling?".

   Now neither of the regular expressions can match the ' character. Thus
   this character is considered a non-token and is removed, leaving the
   input string like so: "s the stock falling?".

   "s" is now matched by /\w+/, and this forms our next token. Upon
   removing this token, we get the following input string " the stock
   falling?".

   Again, neither of the regular expressions match this input string, and
   the leading space character is removed as a non-token. Similarly the
   rest of the line is tokenized to yield the tokens "the", "stock",
   "falling" and "?".

  3.2.2 Example 2:
   3.2.2.1. Input text:

       why's the stock falling?

   3.2.2.2. Regular expressions:

       /fall/
       /falling/
       /stock/

   3.2.2.3. Resulting tokens:

       stock     fall

   3.2.2.4. Explanation:

   Initially our input string is the entire input text: "why's the stock
   falling?". None of the regular expressions match, and we remove the
   first character to get as input string the following: "why's the stock
   falling?". Similarly, again the regular expressions don't match, and we
   have to remove the first character. This goes on until our input string
   becomes: "stock falling?".

   Now "stock" matches the regular expression /stock/, and this token is
   removed, leaving " falling?" as the input string. Since the space
   character does not form a token, it is removed. Now we have "falling?"
   as our input string.

   Now observe that we have two regular expressions, /fall/ and /falling/,
   both of which can match the input string. However, since /fall/ appears
   before /falling/ in the list, the token formed is "fall". This leaves
   our input string as: "ing?". None of the regular expressions match this
   or any of the subsequent input strings obtained by removing one by one
   the first characters. Hence we get as tokens "stock" and "fall".

  3.2.3 Example 3:
   3.2.3.1. Input text:

       why's the stock falling?

   3.2.3.2. Regular expressions:

       /falling/
       /fall/
       /stock/

   3.2.3.3. Resulting tokens:

       stock     falling

   3.2.3.4. Explanation:

   Observe that this example differs from the previous one only in the
   order of the regular expressions. The tokenization proceeds exactly as
   in the previous example, until we have as our input string "falling?".
   Here, we have /falling/ as our first regular expression, and so we get
   "falling" as our token.

   Examples 3.2.2 and 3.2.3 demonstrate the importance of the order in
   which the regular expressions are provided to the tokenization process.

  3.2.4. Example 4:
   3.2.4.1. Input text:

       why's the stock falling?

   3.2.4.2. Regular expressions:

       /the stock/
       /\w+/

   3.2.4.3. Resulting tokens:

       why       s       the stock
       falling

   3.2.4.4. Explanation:

   The thing to note here is that one of the regular expressions has an
   embedded space character in it. This causes no problems: our definition
   of a token allows embedded space characters in them! Once our input
   string is "the stock falling?", the regular expression /the stock/ is
   matched, and the string "the stock" forms our next token.

 4. Ngrams:
   An Ngram is a sequence of n tokens. We shall delimit tokens in an Ngram
   by the diamond symbol, i.e. "<>". Thus, "big<>boy<>" is a bigram whose
   tokens are "big" and "boy". Similarly, "stock<>falling<>?<>" is a
   trigram whose tokens are "stock" and "falling" and "?". "the
   stock<>falling<>" is a bigram with tokens "the stock" and "falling".

   Given a piece of text, Ngrams are usually formed of contiguous tokens.
   For instance, lets take example 3.2.1, where our tokens, in the order in
   which they appear in the text, are the following:

       why      s      the      stock      falling      ?

   Then, the following are all the bigrams:

       why<>s<>            s<>the<>        the<>stock<>
       stock<>falling<>    falling<>?<>

   The following are all the trigrams:

       why<>s<>the<>           s<>the<>stock<>
       the<>stock<>falling<>   stock<>falling<>?<>

   The following are all the 4-grams:

       why<>s<>the<>stock
       s<>the<>stock<>falling
       s<>the<>stock<>falling<>?<>

   Etcetera.

   The Ngrams shown above are all formed from contiguous tokens. Although
   this is the default, we also allow Ngrams to be formed from
   non-contiguous tokens.

   To do so, we first define a "window" of size k to be a sequence of k
   contiguous tokens, where the value of k is greater than or equal to the
   value of n for the Ngrams. An Ngram can be formed from any n tokens as
   long as all the tokens belong to a single window of size k. Further the
   n tokens must occur in the Ngram in exactly the same order as they occur
   in the window.

   Put another way, given a window of k tokens, we drop k-n tokens from the
   window, and what remains is an Ngram!

   Thus for instance, taking example 3.2.1 again, recall that our tokens in
   the order in which they occur in the text are the following:

       why      s      the      stock      falling      ?

   Then, the following are all the bigrams with a window size of 3:

       why<>s<>               why<>the<>         s<>the<>
       s<>stock<>             the<>stock<>       the<>falling<>
       stock<>falling<>       stock<>?<>         falling<>?<>

   The following are all the bigrams with a window size of 4:

       why<>s<>               why<>the<>         why<>stock<>
       s<>the<>               s<>stock<>         s<>falling<>
       the<>stock<>           the<>falling<>     the<>?<>
       stock<>falling<>       stock<>?<>         falling<>?<>

   The following are all the trigrams with a window size of 4:

       why<>s<>the<>          why<>s<>stock<>     why<>the<>stock<>
       s<>the<>stock<>        s<>the<>falling<>   s<>stock<>falling<>
       the<>stock<>falling<>  the<>stock<>?<>     the<>falling<>?<>
       stock<>falling<>?<>

   Etc.

 5. Program count.pl:
   This program takes as input a flat ASCII text file and outputs all
   Ngrams, or token sequences of length 'n', where the value of 'n' can be
   decided by the user. Non-contiguous Ngrams within a window of size 'k'
   as described above can also be found and output. For every output Ngram,
   its frequency of occurrence as well as the frequencies of all the
   combinations of the tokens it is made up of are output. Details follow.

  5.1. Default Way to Run count.pl:
   The most basic way of running this program is the following:

   Example 5.1: count.pl output.txt input.txt

   where input.txt is the input text file in which to find the Ngrams and
   output.txt is the output file into which count.pl will put all the
   Ngrams with their frequencies.

  5.2. Changing the Length of Ngrams and the Size of the Window:
   Several default values are in use when the program is run this way. For
   example it is assumed that one is counting bigrams, that is the value of
   'n' is 2. This can be changed by using the option --ngram N, where 'N'
   is the number of tokens you want in each Ngram. Thus, to find all
   trigrams in input.txt, run count.pl thus:

   Example 5.2: count.pl --ngram 3 output.txt input.txt

   Another default value in use is the window size. Window size defaults to
   the value of 'n' for Ngrams. Thus, in example 5.1 the window size was 2
   while in example 5.1, because of the --ngram 3 option , the window size
   was 3. This can be changed using the --window N option. Thus, for
   example to find all bigrams within windows of size 3, one would run the
   program like so:

   Example 5.3a: count.pl --window 3 output.txt input.txt

   Similarly, to find all trigrams within a window of size 4:

   Example 5.3b: count.pl --ngram 3 --window 4 output.txt input.txt

  5.3. Using User-Provided Token Definitions:
   In all these examples, the tokenization and Ngram formation proceeds as
   described in sections 3 and 4 above. In these examples, the default
   token definitions are used:

    \w+        -> this matches a contiguous sequence of alpha-numeric characters
    [\.,;:\?!] -> this matches a single punctuation mark

   As mentioned previously, these default token definitions can be
   over-ridden by using the option --token FILE, where FILE is the name of
   the file containing the regular expressions on which the token
   definitions will be based. Each regular expression in this FILE should
   be on a line of its own, and should be delimited by the forward slash
   '/'. Further, these should be valid Perl regular expressions, as defined
   in [1], which means for example that any occurrence of the forward slash
   '/' within the regular expression must be 'escaped'.

  5.4 Removing character strings via --nontoken option:
   This option allows a user to define regular expressions that will match
   strings that should not be considered as tokens. These strings will be
   removed from the data and not counted or included in Ngrams.

   The --nontoken option is recommended when there are predictable
   sequences of characters that you know should not be included as tokens
   for purposes of counting Ngrams, finding collocations, etc.

   For example, if mark-up symbols like <s>, <p>, [item], [/ptr] exist in
   text being processed, you may want to include those in your list of
   nontoken items so they are discarded. If not, a simple regex such as
   /\w+/ will match with 's', 'p', 'item', 'ptr' from these tags, leading
   to confusing results.

   The --nontoken option on the command line should be followed by a file
   name (NON_TOKEN). This file should contain Perl regular expressions
   delimited by forward slashes '/' that define non-tokens. Multiple
   expressions may be placed on separate lines or be separated via the '|'
   (Perl 'or') as in /regex1|regex2|../

   The following are some of the examples of valid non-token definitions.

    /<\/?s|p>/ : will remove xml tags like <s>, <p>, </s>, </p>.

    /\[\w+\]/  : will remove all words which appear in square brackets like
            [p], [item], [123] and so on.

   count.pl will first remove any string from the input data that matches
   the non-token regular expression, and only then will match the remaining
   data against the token definitions. Thus, if by chance a string matches
   both the token and nontoken definitions, it will be removed as
   --nontoken has a higher priority than --token or the default token
   definition.

  5.5. The Output Format of count.pl:
   Assume that the following are the contents of the input text file to
   count.pl; let us call the file test.txt:

    first line of text
    second line
    and a third line of text

   Further assume that count.pl is run like so:

    count.pl test.cnt test.txt

   Thus, test.cnt will have all the bigrams found in file test.txt using a
   window size of 2 and using the two default tokens as above. Following
   then are the contents of file test.cnt:

    11
    line<>of<>2 3 2
    of<>text<>2 2 2
    second<>line<>1 1 3
    line<>and<>1 3 1
    and<>a<>1 1 1
    a<>third<>1 1 1
    first<>line<>1 1 3
    third<>line<>1 1 3
    text<>second<>1 1 1

   The number on the first line, 11, indicates that there were total 11
   bigrams in the input file.

   From the next line onwards, the various bigrams found are listed. Recall
   that the tokens of the Ngrams are delimited by the diamond signs: <>.
   Thus the bigram on the first line is line<>of<>, made up of the tokens
   "line" and "of" in that order; the bigram on the second line is
   of<>text<>, made up of the tokens "of" and "text", etc.

   After the diamond following the last token there are three numbers. The
   first of these numbers denotes the number of times this Ngram occurs in
   the input text file. Thus bigram line<>of<> occurs 2 times in the input
   file, as does bigram of<>text<>. The second number denotes in how many
   bigrams the token "line" occurs as the left-hand-token. In this case,
   "line" occurs on the left of three bigrams, namely two copies of bigram
   "line<>of" and the bigram "line<>and<>". Similarly, the third number
   denotes the number of bigrams in which the word "of" occurs as the
   right-hand-token. In this case, "of" occurs on the right of two bigrams,
   namely the two copies of the bigram "line<>of<>".

   Similar output is obtained for trigrams. Assume again that the input
   file is above, and assume that count.pl is run thusly:

    count.pl --ngram 3 test.cnt test.txt

   The output test.cnt file is as follows:

    10
    line<>of<>text<>2 3 2 2 2 2 2
    and<>a<>third<>1 1 1 1 1 1 1
    third<>line<>of<>1 1 3 2 1 1 2
    second<>line<>and<>1 1 3 1 1 1 1
    line<>and<>a<>1 3 1 1 1 1 1
    a<>third<>line<>1 1 1 2 1 1 1
    text<>second<>line<>1 1 1 2 1 1 1
    of<>text<>second<>1 1 1 1 1 1 1
    first<>line<>of<>1 1 3 2 1 1 2

   Once again, the number on the first line says that there are 10 trigrams
   in the input text file. The first trigram in the list is
   "line<>of<>text<>" made up of the tokens "line", "of" and "text" in that
   order. Similarly, the next trigram is "and<>a<>third<>" made of the
   tokens "and", "a" and "third".

   Observe that this time there are more numbers after the last token. The
   first number denotes, as before, the number of times this trigram occurs
   in the input text file. Thus, "line<>of<>text" occurs twice in the input
   file while "and<>a<>third" occurs just once. The second, third and
   fourth numbers denote the number of trigrams in which the tokens "line",
   "of" and "text" appear in the first, second and third positions
   respectively. Thus, "line" occurs as the token in the first position in
   3 trigrams, namely 2 copies of "line<>of<>text<>" and one copy of
   "line<>and<>a<>". Similarly, the tokens "of" and "text" appear as the
   second and third tokens respectively of two bigrams, namely the two
   copies of "line<>of<>text<>".

   The fifth number denotes the number of bigrams in which "line" occurs as
   the first token and "of" occurs as the second token. Once again, there
   are only two trigrams in which this happens: the two copies of
   "line<>of<>text<>". The sixth number denotes the number of bigrams in
   which "line" occurs as the token in the first place and "text" occurs as
   the token in the third place. The seventh number denotes the number of
   bigrams in which "of" occurs as the token in the second place and "text"
   occurs as the token in the third place.

   In general, assume we are dealing with Ngrams of size 'n'. Given an
   Ngram, denote its leftmost token as w[0], the next token as w[1], and so
   on until w[n-1]. Further let f(a, b, ..., c) be the number of Ngrams
   that have token w[a] in position a, token w[b] in position b, ... and
   token w[c] in position c, where 0 <= a < b < ... < c < n.

   Then, given an ngram, the first frequency value reported is f(0, 1, ...,
   n-1).

   This is followed by n frequency values, f(0), f(1), ..., f(n-1).

   This is followed by (n choose 2) values, f(0, 1), f(0, 2), ..., f(0,
   n-1), f(1, 2), ..., f(1, n-1), ... f(n-2, n-1).

   This is followed by (n choose 3) values, f(0, 1, 2), f(0, 1, 3), ...,
   f(0, 1, n-1), f(0, 2, 3), ..., f(0, 2, n-1), ..., f(0, n-2, n-1), ...,
   f(1, 2, 3), ..., f(n-3, n-2, n-1).

   And so on, until (n choose n-1), that is n, frequency values f(0, 1,
   ..., n-2), f(0, 1, ..., n-3, n-1), f(0, 1, ..., n-4, n-2, n-1), ...,
   f(1, 2, ..., n-1).

   This gives us a total of 2^n-1 possible frequency values. We call each
   such frequency value a "frequency combination", since it expresses the
   number of Ngrams that has a given combination of one or more tokens in
   one or more fixed positions. By default all such combinations are
   printed, exactly in the order showed above. To see which combinations
   are being printed one could use the option --get_freq_combo FILE. This
   prints to the file the inputs to the imaginary 'f' function defined
   above exactly in the order the frequency values occur in the main
   output. Thus for instance, running the program like so:

    count.pl --get_freq_combo freq_combo.txt test.cnt test.txt

   Assuming that test.txt file is the one shown above, the following output
   is created in file freq_combo.txt:

    0 1
    0
    1

   and the following output in file test.cnt:

    11
    line<>of<>2 3 2
    of<>text<>2 2 2
    second<>line<>1 1 3
    line<>and<>1 3 1
    and<>a<>1 1 1
    a<>third<>1 1 1
    first<>line<>1 1 3
    third<>line<>1 1 3
    text<>second<>1 1 1

   Recall that since the option --ngram is not being used, the default
   value of n, 2, is being used here. After each bigram in the test.cnt
   file are three numbers; the first number corresponds to f(0, 1), the
   second number corresponds to f(0) and the third to f(1). Observe that
   line 'i' of the output in file freq_combo.txt file represents the input
   to the imaginary 'f' function that creates the 'i_th' frequency value on
   each line of the output in file test.cnt.

   Similarly, running the program thus:

    count.pl --ngram 3 --get_freq_combo freq_combo.txt test.cnt test.txt

   produces the following output in freq_combo.txt:

    0 1 2
    0
    1
    2
    0 1
    0 2
    1 2

   and the following output in file test.cnt

    10
    line<>of<>text<>2 3 2 2 2 2 2
    and<>a<>third<>1 1 1 1 1 1 1
    third<>line<>of<>1 1 3 2 1 1 2
    second<>line<>and<>1 1 3 1 1 1 1
    line<>and<>a<>1 3 1 1 1 1 1
    a<>third<>line<>1 1 1 2 1 1 1
    text<>second<>line<>1 1 1 2 1 1 1
    of<>text<>second<>1 1 1 1 1 1 1
    first<>line<>of<>1 1 3 2 1 1 2

   The seven numbers after each trigram in file test.cnt correspond
   respectively to f(0, 1, 2), f(0), f(1), f(2), f(0, 1), f(0, 2) and f(1,
   2), as shown in the file freq_combo.txt.

   It is possible that the user may not require all the frequency values
   output by default, or that the user requires the frequency values in a
   different order. To change the default frequency values output, one may
   provide count.pl with a file containing the inputs to the 'f' function
   using the option --set_freq_combo.

   Thus for instance, if the user wants to create trigrams, and only
   requires the frequencies of the trigrams and the frequency values of the
   three tokens in the trigrams (and not of the pairs of tokens), then he
   may create the following file (say, user_freq_combo.txt):

    0 1 2
    0
    1
    2

   and provide this file to the count.pl program thus:

   count.pl --ngram 3 --set_freq_combo user_freq_combo.txt test.cnt
   test.txt

   this produces the following test.cnt file:

    10
    line<>of<>text<>2 3 2 2
    and<>a<>third<>1 1 1 1
    third<>line<>of<>1 1 3 2
    second<>line<>and<>1 1 3 1
    line<>and<>a<>1 3 1 1
    a<>third<>line<>1 1 1 2
    text<>second<>line<>1 1 1 2
    of<>text<>second<>1 1 1 1
    first<>line<>of<>1 1 3 2

   Observe that the only difference between this output and the default
   output is that instead of reporting 7 frequency values per ngram, only
   the 4 requested are output.

   count2huge.pl is a method to convert the output of count.pl to
   huge-count.pl. The program can sort the bigrams in the alphabet order
   and generate the same output with huge-count.pl. The reason we sort the
   bigrams is because when we use the bigrams list to generate
   co-occurrence matrix for the vector relatedness measure of
   UMLS-Similarity, it requires the input bigrams which start with the same
   term are grouped together. Sort the bigrams when create the
   co-occurrence can imporve the efficiency.

  5.6. "Stopping" the Ngrams:
   The user may "stop" the Ngrams formed by count.pl by providing a list of
   stop-tokens through the option --stop FILE. Each stop token in FILE
   should be a Perl regular expression that occurs on a line by itself.
   This expression should be delimited by forward slashes, as in /REGEX/.
   All regular expression capabilities in Perl are supported except for
   regular expression modifiers (like the "i" /REGEX/i).

   The following are a few examples of valid entries in the stop list.

    /^\d+$/
    /\bthe\b/
    /\b[Tt][Hh][Ee]\b/
    /^and$/
    /\bor\b/
    /^be(ing)?$/

   There are two modes in which a stop list can be used, AND and OR. The
   default mode is AND, which means that an Ngram must be made up entirely
   of words from the stoplist before it is eliminated. The OR mode
   eliminates an Ngram if any of the words that make up the Ngram are found
   in the stoplist.

   The mode is specified via an extended option that should appear on the
   first line of the stop file. For example,

    @stop.mode=AND
    /^for$/
    /^the$/
    /^\d+$/

   would eliminate bigrams such as 'for the', 'for 10', etc. (where both
   elements of the bigram are from the stop list.) But will not remove
   bigrams like '10 dollars' or 'of the'.

    @stop.mode=OR
    /^for$/
    /^the$/
    /^\d+$/

   would eliminate bigrams such as 'for our', '10 dollars', etc. (where at
   least one element of the bigram is from the stop list).

   If the @stop.mode= option is not specified, the default value is AND.

   In both modes, Ngrams that are eliminated do not add to the various
   Ngram and individual word frequency counts. Ngrams that are "stoplisted"
   are treated as if they never existed and are not counted.

  5.6.1 Usage Notes for Regular Expressions in Stop Lists:
   (1) In Perl regular expressions, \b specifies word boundary and ^ and $
   specify the start and end of a string (or line of text). These can be
   used in defining your stop list entries, but must be used with somewhat
   carefully.

   count.pl examines each token individually, thereby treating each as a
   separate string or line. As a result, you can use either /\bregex\b/ or
   /^regex$/ to exactly match a token made up of alphanumeric characters,
   as in \bcat\b or \^cat$\. However, please note that if a token consists
   of other characters (as in n.b.a.) they can behave differently. Suppose
   for example that your token is www.dot.com. If you have a stop list
   entry \bwww\b it will match the 'www' portion of the token, since the
   '.' is considered to be a word boundary. \^www$\ would not have that
   problem.

   (2) If instead of /^the$/, regex /the/ is used as a stop regex, then
   every token that matches /the/ will be removed. So tokens like 'there',
   'their', 'weather','together' will be excluded with the stop regex
   /the/. On the other hand, with the regex /^the$/, all occurrences of
   only word 'the' will be removed.

   (3) You can also use a stop regex /^the/ to remove tokens that begin
   with 'the' like 'their' or 'them' but not 'together'. Similarly, stop
   regex /the$/ will remove all tokens which end in 'the' like 'swathe' or
   'tithe' but not 'together' or 'their'.

   (4) Please note that stoplist handling changed as of version 0.53. If
   you use a stoplist developed for an earlier version of NSP, then it will
   not behave in the same way!!

   In earlier versions when you specified /regex/ as a stoplist item, we
   assumed that you really meant /\bregex\b/ and proceeded accordingly.
   However, since regular expressions are now fully supported we require
   that you specify exactly what you mean. So if you include /is/ as a
   member of your stoplist, we will now assume that you mean any word that
   contains 'is'somewhere within in (like 'this' or 'kiss' or 'isthmus'
   ...) To preserve the functionality of your old stoplists, simply convert
   them from

    /the/
    /is/
    /of/

   to

    /\bthe\b/
    /\bis\b/
    /\bof\b/

   (6) regex modifiers like i or g which come after the end slash like:

    /regex/i
    /regex/g

   are not supported. See FAQ.txt for an explanation.

   This makes it slightly inconvenient to specify that you would like to
   stop any form of a given word. For example, if you wanted to stop 'THE',
   'The', 'THe', etc. you would have to specify a regex such as

    /[Tt][Hh][Ee]/

  5.6.2. Differences between --nontoken and --stop:
   In theory we can remove "unwanted" words using either the --nontoken
   option or the --stop option. However, these are rather different
   techniques.

   --stop only removes stop words after they are recognized as valid
   tokens. Thus, if you wish to remove some markup tags like [p] or [item]
   from the data using a stop list, you first need to recognize these as
   tokens (via a --token definition like /\[\w+\]/) and then remove them
   with a --stop list.

   In addition, the --stop option operates on an Ngram and does not remove
   individual words. It removes Ngrams (and reduces the count of the number
   of Ngrams in the sample). In other words, the --stop option only comes
   into effect after the Ngrams have been created.

   On the other hand, the --nontoken option eliminates individual
   occurrence of a non-token sequence before finding Ngrams.

   Some examples to clarify the distinction between --stop and --nontoken

   -----------------------------------------------------------------------

   Consider an input file count.input =>

     [ptr] <s> this is a test written for count.pl </s> [/ptr]
     their them together wither tithe

   NontokenFile nontoken.regex =>

     /\[\/?\w+\]/
     /<\/?\w+>/

   case (a) StopFile stopfile.txt => /the/
   ----------------------------------------

   Running count.pl with the command :

    count.pl --stop stopfile.txt --nontoken nontoken.regex count.out count.input

   will first remove all nontokens from the input file. Hence the tokenized
   text from which the bigrams will be created will be =>

     this is a test written for count.pl
     their them together wither tithe

   Since the StopFile contains /the/ all tokens which include 'the' are
   eliminated. Thus, the bigrams:

    their<>them<>
    them<>together<>
    together<>wither<>
    wither<>tithe<>

   will all be removed. This is because each word in each bigram contains
   "the" and the default stop mode is AND. Note that if there was a bigram
   such as "on<>their<>" it would not be removed since both words to not
   match the stoplist. The output file count.out will contain the
   following:

    count.out=>

    9
    test<>written<>1 1 1
    this<>is<>1 1 1
    a<>test<>1 1 1
    is<>a<>1 1 1
    for<>count<>1 1 1
    .<>pl<>1 1 1
    count<>.<>1 1 1
    written<>for<>1 1 1
    pl<>their<>1 1 1

   case (b) StopFile stopfile.txt => /^the/

   ----------------------------------------

   Running count.pl with the command:

    count.pl --stop stopfile.txt --nontoken nontoken.regex count.out count.input

   will first remove all nontokens from the input file. The tokenized text
   will be:

           this is a test written for count.pl
           their them together wither tithe

   Since the StopFile contains /^the/, all tokens which begin with "the"
   are eliminated. Thus, the bigram

    their<>them<>

   will be removed since it consists of two words that begin with "the".
   The output file count.out will contain the 12 bigrams as shown below.

    count.out=>

    12
    test<>written<>1 1 1
    this<>is<>1 1 1
    a<>test<>1 1 1
    is<>a<>1 1 1
    for<>count<>1 1 1
    them<>together<>1 1 1
    .<>pl<>1 1 1
    count<>.<>1 1 1
    written<>for<>1 1 1
    pl<>their<>1 1 1
    wither<>tithe<>1 1 1
    together<>wither<>1 1 1

    case (c) StopFile stopfile.txt => @stop.mode=OR
             /the$/

   ------------------------------------------------

   Running count.pl with the command:

    count.pl --stop stopfile.txt --nontoken nontoken.regex count.out count.input

   will first remove all nontokens from the input file. Hence the tokenized
   text will be:

           this is a test written for count.pl
           their them together wither tithe

   As the StopFile contains /the$/ all tokens which end in 'the' are stop
   words. Thus, in the bigram

    wither<>tithe<>

   "tithe" will match the stoplist since it ends with "the". However, this
   bigram will be eliminated since the stop mode is OR (meaning that if
   either word is in the stop list then the bigram is eliminated). The
   output file count.out will contain the 12 bigrams as shown below.

    count.out=>

    12
    test<>written<>1 1 1
    this<>is<>1 1 1
    a<>test<>1 1 1
    is<>a<>1 1 1
    for<>count<>1 1 1
    them<>together<>1 1 1
    .<>pl<>1 1 1
    their<>them<>1 1 1
    count<>.<>1 1 1
    written<>for<>1 1 1
    pl<>their<>1 1 1
    together<>wither<>1 1 1

  5.7. Removing and Not Displaying Low Frequency Ngrams:
   We allow the user to either remove or to not display low frequency
   Ngrams. The user can remove low frequency Ngrams by using the option
   --remove N by which all Ngrams that occur less than n times are removed.
   The Ngram and the individual frequency counts are adjusted accordingly
   upon the removal of these Ngrams.

   The user can choose not to display low frequency Ngrams by using the
   option --frequency N, by which Ngrams that occur less than n times are
   not displayed in the output. Note that this differs from the --remove
   option above in that the various frequency counts are not changed.
   Intuitively, we continue to believe that these Ngrams have occurred in
   the text - we are simply not interested in looking at them. By contrast,
   in the --remove option we want to actually think that the Ngrams didn't
   occur in the text in the first place, and so we want our numbers to
   agree to that too!

  5.8. Extended Output:
   Observe that one may modify the actual counting process in various ways
   through the various options above. To keep a "record" of which option
   were used and with what values, one can turn the "extended" output on
   with the switch --extended. The extended output records the size of the
   Ngram, the size of the window, the frequency value at which the Ngrams
   were removed and a list of all the source files used to create the count
   output. If a switch was not used, the default value is printed.

  5.9. Histogram Output:
   The user can also generate a "histogram" output by using the --histogram
   FILE option. This histogram output shows how many times Ngrams of a
   certain frequency has occurred. Following is a typical line out of a
   histogram output:

    Number of n-grams that occurred   5 time(s) =    14 (40.94 percent)

   This says that there were 14 distinct Ngrams that occurred 5 times each,
   and between themselves they make up around 41% of the total number of
   Ngrams.

  5.10. Searching for Source Files in Directories, Recursively if Need Be:
   One would usual provide a source file to create Ngrams from. One could
   also provide a directory name - all text files from the directory are
   used to create Ngrams from. Along with a directory name if one also uses
   the switch --recurse, all subdirectories inside the source directory are
   searched for text files recursively, and all text files so found are
   used to create Ngrams from.

 6. Program statistic.pl:
   Program statistic.pl takes as input a list of Ngrams with their
   frequencies in the format output by count.pl and runs a user-selected
   statistical measure of association to compute a "score" for each Ngram.
   The Ngrams, along with their scores, are output in descending order of
   this score.

   The statistical measures of association are implemented separately in
   separate Perl packages (files ending with .pm extension). When running
   statistic.pl, the user needs to provide the name of a statistical
   measure (either from among the ones provided as a part of this
   distribution or those written by the user). Say the name of the
   statistic provided by the user is X. Program statistic.pl will then look
   for Perl package X.pm (in the current directory, or, failing that, the
   system path). If found, this Perl package file will be loaded and then
   used to calculate the statistic on the list of Ngrams provided.

   Please remember to include the path of Measures Directory (in the main
   NSP Package directory) in your system path. This will enable the
   statistic.pl program to find the modules provided with this package.

   As a part of this distribution, we provide the following statistical
   packages: dice, log-likelihood (ll), mutual information (mi), the
   chi-squared test (x2), and the left-fisher test of associativity
   (leftFisher). All these packages follow a fixed set of rules as
   discussed below. It is hoped that these rules are easy to follow and
   that new packages may be written quickly and easily.

   In a sense, program statistic.pl is framework. Its job is to take as
   input Ngrams with their frequencies, to provide those frequencies to the
   statistical library and to format the output from that library. The
   heart of the statistical measure - the actual calculation - lies in the
   library that can be plugged in. This framework allows for quickly
   rigging up new measures; to do so one need worry only about the actual
   calculation, and not of the various mundane issues that are taken care
   of by statistic.pl.

   This section follows with details on how to run statistic.pl, and then
   the format of the libraries and tips on how to write them.

  6.1. Default Way to Run statistic.pl:
   The default way to run statistic.pl is so:

   statistic.pl dice test.dice test.cnt

     where: dice      is the name of the statistic library to be loaded.
           test.dice is the name of the output file in which the results
                     of applying the dice coefficient will be stored.
           test.cnt  is the name of the input file containing the Ngrams
                     and their various frequency values.

   A Perl package with filename dice.pm is searched for in the Perl @INC
   path. Instead of writing just "dice" on the command line, one may also
   write the file name "dice.pm", or the full measure name
   "Text::NSP::Measures::2D::Dice::dice".

   Once such a file is found, it is exported into statistic.pl and tests
   are done to see if this file has the minimum requirements for a
   statistical library (more details below). If these tests fail,
   statistic.pl stops with an error message. Otherwise the library is
   initialized and then for each Ngram in file test.cnt, its frequency
   values are passed to it and its calculated value is noted. Finally, when
   all values have been calculated, the Ngrams are sorted on their
   statistic value and output to file test.dice.

   For example, assume our input test.cnt file is this:

     11
     line<>of<>2 3 2
     of<>text<>2 2 2
     second<>line<>1 1 3
     line<>and<>1 3 1
     and<>a<>1 1 1
     a<>third<>1 1 1
     first<>line<>1 1 3
     third<>line<>1 1 3
     text<>second<>1 1 1

   Thus there are 11 bigrams, the first of which is "line<>of<>", the
   second "of<>text<>" etc.

   Running statistic.pl thusly: statistic.pl dice test.dice test.cnt will
   produce the following test.dice file:

     11
     of<>text<>1 1.0000 2 2 2
     and<>a<>1 1.0000 1 1 1
     a<>third<>1 1.0000 1 1 1
     text<>second<>1 1.0000 1 1 1
     line<>of<>2 0.8000 2 3 2
     third<>line<>3 0.5000 1 1 3
     line<>and<>3 0.5000 1 3 1
     second<>line<>3 0.5000 1 1 3
     first<>line<>3 0.5000 1 1 3

   Once again, the first number is the total number of bigrams - 11. On the
   next line is the highest ranked bigram "of<>text<>". The first number
   following this bigram, 1, is its rank. The next number, 1.0000, is its
   value computed using the dice statistic. The final three numbers are
   exactly the numbers associated with this Ngram in the test.cnt file.

   Observe that three other bigrams also have the same score of 1.000 and
   so the same rank 1. The bigram with the next highest score of 0.8000,
   "line<>of<>", is ranked 2nd instead of 5th. This is a feature of our
   ranking mechanism; the fact that a bigram has a rank 'r' implies that
   there are r-1 distinct scores greater than the score of this Ngram. It
   does not imply that there are r-1 bigrams with higher scores.

  6.2. Changing the Default Ngram Size:
   By default, the Ngrams in the input file are assumed to be bigrams. This
   can however be changed by using the option --ngram. Given an Ngram size
   (either by default or by using the --ngram option), statistic.pl checks
   if there are exactly the correct number of tokens in each Ngram. If this
   is not true, an error is printed and statistic.pl halts.

  6.3. Defining the Meaning of the Frequency Values:
   The "meaning" of the various frequency values after each Ngram in the
   input file is important in that the statistic calculated depends on
   them. By default, the default meanings as defined by count.pl are
   assumed.

   count.pl and all statistical libraries (.pm modules) provided with this
   package are implemented such that they produce/accept the frequency
   values in the same order. So for an ngram,

               word1<>word2<>...wordn-1<>

   "the first frequency value reported is f(0,1,...n-1); this is the
   frequency of the Ngram itself. This is followed by n frequency values
   f(0), f(1),...f(n-1); these are the frequencies of the individual tokens
   in their specific positions in the given Ngram. This is followed by (n
   choose 2) values, f(0,1), f(0,2), ..., f(0,n-1), f(1,2), ..., f(1,n-1),
   ... f(n-2,n-1). This is followed by (n choose 3) values, f(0,1,2),
   f(0,1,3), ..., f(0,1,n-1), f(0,2,3), ... , f(0,2,n-1), ... f(0,n-2,n-1),
   f(1,2,3), ..., f(n-3,n-2,n-1). And so on, until (n choose n-1), that is
   n, frequency values f(0,1,...n-2), f(0,1,..n-3,n-1), f(0,1,...n-4,n-1),
   ..., f(1,2,...n-1)"

   (The above explanation is from "The Design, Implementation and Use of
   the Ngram Statistics Package" [2].)

   So the bigram output of count.pl/bigram input to any statistical library
   will be something like -

       word1<>word2<>f(0,1)<>f(0)<>f(1)

   Or you can also view this as

         word1<>word2<>n11<>n1p<>np1

   where n1p,np1 represent marginal totals in a 2x2 contingency table.

   Similarly, the trigram output of count.pl/trigram input to ll3.pm (which
   is the only trigram statistical library currently provided) will be -

       word1<>word2<>word3<>f(0,1,2)<>f(0)<>f(1)<>f(2)<>f(0,1)<>f(0,2)<>f(1,2)

   Or you can also view this as
   word1<>word2<>word3<>n111<>n1pp<>np1p<>npp1<>n11p<>n1p1<>np11

   where n1pp,np1p,npp1,n11p,n1p1,np11 represent marginal frequencies in a
   3x3 contingency table.

   The frequency combinations being used can be output to a file by using
   the option get_freq_combo.

   If count.pl was run with a set of user-defined frequency combinations
   different from the defaults, then the file containing these frequency
   combinations must be provided to statistic.pl using the option
   set_freq_combo.

   If the number of frequency values does not match the number expected
   (either through the default frequency combinations or through the user
   defined ones provided through the set_freq_combo option) then an error
   is reported. Besides checking that the number of frequency values is
   correct, nothing else is checked.

  6.4. Modifying the Output of statistic.pl:
   One may request statistic.pl to ignore all Ngrams which have a frequency
   less than a user-defined threshold by using the --frequency option. To
   be able to do this however, the Ngram frequency should be present among
   the various frequency values in the input Ngram file. It is possible to
   set up a frequency combination file that prevents count.pl from printing
   the actual frequency of each Ngram; if such a file is given to
   statistic.pl, the frequency cut-off requested through option --frequency
   will be ignored and a warning issued to that effect.

   Once the statistical values for the Ngrams are calculated and the Ngrams
   have been ranked according to these values, one may request not to print
   Ngrams below a certain rank. This can be done using the option --rank.
   Unlike the frequency cut-off above, all calculations are done and then
   Ngrams that fall below a certain rank are cut-off. In the frequency
   cut-off, calculations are not performed on the Ngrams that are ignored.

   The value returned by the statistic libraries may be floating point
   numbers; by default 4 places of decimal are shown. This can be changed
   by using the option --precision through which the user can decide how
   many places of decimal he wishes to see. Note that the values returned
   by the library are rounded to the places of decimal requested by the
   user, and THEN the ranking is done. Thus two Ngram that actually have
   different scores, but whose scores both round up to the same number for
   the given precision will get the same rank!

   The user can also use the statistical score to cut off Ngrams. Thus,
   using the option --score, one may request statistic.pl to not print
   Ngrams that get a score less than the given threshold.

   Similar to count.pl, the user can request statistic.pl to print extended
   information by using the --extended switch. Without this switch, all
   extended information already in the input file will be lost; with it,
   they will all be preserved and new extended data will be output.

   The output of statistic.pl is not formatted for human eyes - this can be
   done using the switch --format. Columns will be aligned as much as
   possible and the output is (often) neater than the default output.

  6.5. The Measures of Association Provided in This Distribution:
   We provide the 10 measures of association with this distribution. Nine
   are suitable for use with bigrams and one may be used with trigrams.

   The bigram measures are:

   *   Dice Coefficient (Text::NSP::Measures::2D::Dice::dice)

   *   Fishers exact test - left sided
       (Text::NSP::Measures::2D::Fisher::left)

   *   Fishers exact test - right sided
       (Text::NSP::Measures::2D::Fisher::right)

   *   Fishers twotailed test - right sided
       (Text::NSP::Measures::2D::Fisher::twotailed)

   *   Jaccard Coefficient (Text::NSP::Measures::2D::Dice::jaccard)

   *   Log-likelihood ratio (Text::NSP::Measures::2D::MI::ll)

   *   Mutual Information (Text::NSP::Measures::2D::MI::tmi)

   *   Odds Ratio (Text::NSP::Measures::2D::odds)

   *   Pointwise Mutual Information (Text::NSP::Measures::2D::MI::pmi)

   *   Phi Coefficient (Text::NSP::Measures::2D::CHI::phi)

   *   Pearson's Chi Squared Test (Text::NSP::Measures::2D::CHI::x2)

   *   Poisson Stirling Measure (Text::NSP::Measures::2D::MI::ps)

   *   T-score (Text::NSP::Measures::2D::CHI::tscore)

   The trigram measures are:

   *   Log-likelihood ratio (Text::NSP::Measures::3D::MI::ll)

   *   Mutual Information (Text::NSP::Measures::3D::MI::tmi)

   *   Pointwise Mutual Information (Text::NSP::Measures::3D::MI::pmi)

   *   Poisson Stirling Measure (Text::NSP::Measures::3D::MI::ps)

   The 4-gram measures is:

   *   Log-likelihood ratio (Text::NSP::Measures::4D::MI::ll)

   Any of these measures can be used as follows:

     statistic.pl XXXX output.txt input.txt

   where XXXX is the name of the measure.

   More information on how to write a new statistic library is provided in
   the documentation (perldoc) of Text::NSP::Measures. A few additional
   details about the Measures can be found in their respective perldocs.

 7. Referencing:
   If you write a paper that has used NSP in some way, we'd certainly be
   grateful if you sent us a copy and referenced NSP. We have a published
   paper about NSP that provides a suitable reference:

    @inproceedings{BanerjeeP03,
           author = {Banerjee, S. and Pedersen, T.},
           title = {The Design, Implementation, and Use of the {N}gram {S}tatistic {P}ackage},
           booktitle = {Proceedings of the Fourth International Conference on Intelligent Text Processing and Computational Linguistics},
           pages = {370-381},
           year = {2003},
           month ={February},
           address = {Mexico City}}

   This paper can be found at :

   <http://cpansearch.perl.org/src/TPEDERSE/Text-NSP-1.13/doc/cicling2003.p
   s>

   or

   <http://cpansearch.perl.org/src/TPEDERSE/Text-NSP-1.13/doc/cicling2003.p
   df>

AUTHORS
   Ted Pedersen, University of Minnesota, Duluth tpederse at d.umn.edu

   Satanjeev Banerjee

   Amruta Purandare

   Saiyam Kohli

   Last modified by : $Id: README.pod,v 1.13 2010/11/12 19:13:41 btmcinnes
   Exp $

BUGS
   Please report to the NSP mailing list

SEE ALSO
   *   NSP Home: <http://ngram.sourceforge.net>

   *   Mailing List : <http://groups.yahoo.com/group/ngram/>

 8. Acknowledgments:
   This work has been partially supported by a National Science Foundation
   Faculty Early CAREER Development award (\#0092784) and by a Grant-in-Aid
   of Research, Artistry and Scholarship from the Office of the Vice
   President for Research and the Dean of the Graduate School of the
   University of Minnesota.

COPYRIGHT
   Copyright (C) 2000-2010, Ted Pedersen, Satanjeev Banerjee, Amruta
   Purandare, Bridget Thomson-McInnes Saiyam Kohli, and Ying Liu

   This program is free software; you can redistribute it and/or modify it
   under the terms of the GNU General Public License as published by the
   Free Software Foundation; either version 2 of the License, or (at your
   option) any later version.

   This program is distributed in the hope that it will be useful, but
   WITHOUT ANY WARRANTY; without even the implied warranty of
   MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General
   Public License for more details.

   You should have received a copy of the GNU General Public License along
   with this program; if not, write to

       The Free Software Foundation, Inc.,
       59 Temple Place - Suite 330,
       Boston, MA  02111-1307, USA.

   Note: a copy of the GNU General Public License is available on the web
   at <http://www.gnu.org/licenses/gpl.txt> and is included in this
   distribution as GPL.txt.