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NAME

Algorithm::RabinKarp - Rabin-Karp streaming hash

SYNOPSIS

  my $text = "A do run run run, a do run run";
  my $kgram = Algorithm::RabinKarp->new($window, $text);

or

  my $kgram2 = Algorithm::RabinKarp->new($window, $fh);

or my $kgram3 = Algorithm::RabinKarp->new($window, sub { ... return $num, $position; });

  my ($hash, $start_position, $end_position) = $kgram->next;
  
  my @values = $kgram->values;
  
  my %occurances; # a dictionary of all kgrams.
  while (my ($hash, @pos) = @{shift @values}) {
    push @{$occurances{$hash}}, \@pos; 
  }
  
  my $needle = Algorithm::RabinKarp->new(6, "needle");
  open my $fh, '<', "haystack.txt";
  my $haystack = Algorithm::RabinKarp->new(6, $fh);
  my $needle_hash = $needle->next;
  
  while (my ($hay_hash, @pos) = $haystack->next) {
    warn "Possible match for 'needle' at @pos" 
      if $needle_hash eq $hay_hash;
  }
  
  

DESCRIPTION

This is an implementation of Rabin and Karp's streaming hash, as described in "Winnowing: Local Algorithms for Document Fingerprinting" by Schleimer, Wilkerson, and Aiken. Following the suggestion of Schleimer, I am using their second equation:

  $H[ $c[2..$k + 1] ] = (( $H[ $c[1..$k] ] - $c[1] ** $k ) + $c[$k+1] ) * $k

The results of this hash encodes information about the next k values in the stream (hense k-gram.) This means for any given stream of length n integer values (or characters), you will get back n - k + 1 hash values.

For best results, you will want to create a code generator that filters your data to remove all unnecessary information. For example, in a large english document, you should probably remove all white space, as well as removing all capitalization.

INTENT

By preprocessing your document with the Rabin Karp hashing algorithm, it makes it possible to create a "fingerprint" of your document (or documents), and then perform multiple searches for fragments contained within your document database.

Schleimer, Wilkerson, and Aiken suggest preproccessing to remove unnecessary information (like whitespace), as well as known redundent information (like, say, copyright notices or other boilerplate that is 'acceptable'.)

They also suggest a post processing pass to reduce data volume, using a technique called winnowing (see the link at the end of this documentation.)

METHODS

new($k, [FileHandle|Scalar|Coderef] )

Creates a new hash generator. If you provide a callback function, it must return the next integer value in the stream. Additionally, you may return the original position of the value in the stream (ie, you may have been filtering characters out because they're redundant.)

next()

Returns an array containing (kgram hash value, start position , end position, start, end) for every call that can have a hash generated, or () when we have reached the end of the stream.

next() pulls the first $k from the stream on the first call. Each successive call to next() has a complexity of O(1).

values

Returns an array containing all n - k + 1 hash values contained within the data stream, and the positions associated with them (in the same format as yielded by next.)

After calling values() the stream will be completely exhausted, causing subsequent calls to values and next() to return undef.

NOTE: You should use next if your source stream is infinite, as values will greedily attempt to consume all values.

BUGS

The current multipliers and modulus lead to very poor hash distributions. I'll investigate methods of improving this in future versions.

SEE ALSO

  "Winnowing: Local Algorithms for Document Fingerprinting"
  L<http://theory.stanford.edu/~aiken/publications/papers/sigmod03.pdf>

  Wikipedia: Rabin-Karp string search algorithm
  L<http://en.wikipedia.org/wiki/Rabin-Karp>

AUTHOR

  Norman Nunley E<lt>nnunley@gmail.comE<gt>
  Nicholas Clark (Who paired with me)