package Search::Tools::HeatMap;
use Moo;
use Carp;
use Data::Dump qw( dump );
extends 'Search::Tools::Object';
use namespace::autoclean;
our $VERSION = '1.007';
# debugging only
my $OPEN = '[';
my $CLOSE = ']';
eval { require Term::ANSIColor; };
if ( !$@ ) {
$OPEN .= Term::ANSIColor::color('bold red');
$CLOSE = Term::ANSIColor::color('reset') . $CLOSE;
}
my @attrs = qw( window_size
tokens
spans
as_sentences
_treat_phrases_as_singles
_qre
_query
_stemmer
);
for my $attr (@attrs) {
has $attr => ( is => 'rw' );
}
=head1 NAME
Search::Tools::HeatMap - locate the best matches in a snippet extract
=head1 SYNOPSIS
use Search::Tools::Tokenizer;
use Search::Tools::HeatMap;
my $tokens = $self->tokenizer->tokenize( $my_string, qr/^(interesting)$/ );
my $heatmap = Search::Tools::HeatMap->new(
tokens => $tokens,
window_size => 20, # default
as_sentences => 0, # default
);
if ( $heatmap->has_spans ) {
my $tokens_arr = $tokens->as_array;
# stringify positions
my @snips;
for my $span ( @{ $heatmap->spans } ) {
push( @snips, $span->{str} );
}
my $occur_index = $self->occur - 1;
if ( $#snips > $occur_index ) {
@snips = @snips[ 0 .. $occur_index ];
}
printf("%s\n", join( ' ... ', @snips ));
}
=head1 DESCRIPTION
Search::Tools::HeatMap implements a simple algorithm for locating
the densest clusters of unique, hot terms in a TokenList.
HeatMap is used internally by Snipper but documented here in case
someone wants to abuse and/or improve it.
=head1 METHODS
=head2 new( tokens => I<TokenList> )
Create a new HeatMap. The I<TokenList> object may be either a
Search::Tools::TokenList or Search::Tools::TokenListPP object.
=head2 BUILD
Builds the HeatMap object. Called internally by new().
=cut
sub BUILD {
my $self = shift;
$self->_build;
return $self;
}
=head2 window_size
The max width of a span. Defaults to 20 tokens, including the
matches.
Set this in new(). Access it later if you need to, but the spans
will have already been created by new().
=head2 as_sentences
Try to match clusters at sentence boundaries. Default is false.
Set this in new().
=head2 spans
Returns an array ref of matching clusters. Each span in the array
is a hash ref with the following keys:
=over
=item cluster
=item pos
=item heat
=item str
=item str_w_pos
This item is available only if debug() is true.
=item unique
=back
=cut
# TODO this is mostly integer math and might be much
# faster if rewritten in XS once the algorithm is "final".
sub _build {
my $self = shift;
my $tokens = $self->tokens or croak "tokens required";
my $window = $self->window_size || 20;
my $as_sentences = $self->as_sentences || 0;
return $as_sentences
? $self->_as_sentences( $tokens, $window )
: $self->_no_sentences( $tokens, $window );
}
# currently _as_sentences() is mostly identical to _no_sentences()
# with slightly fewer gymnastics.
# Since we already know via sentence_starts where our boundaries are,
# we do not have to call $tokens->get_window().
# Who knows how we might improve the sentence algorithm in future,
# so already having it in its own method seems like a win.
sub _as_sentences {
my ( $self, $tokens, $window ) = @_;
my $debug = $self->debug || 0;
my $sentence_length = $window * 2;
# build heatmap with sentence starts
my $num_tokens = $tokens->len;
my $tokens_arr = $tokens->as_array;
my %heatmap = ();
my $token_list_heat = $tokens->get_heat;
my $heat_sentence_starts = $tokens->get_sentence_starts;
# this regex is a sanity check for phrases. we replace the \ with a
# more promiscuous check because the single space is too naive
# for real text (e.g. st. john's)
my $qre = $self->{_qre};
my @phrases = @{ $self->{_query}->phrases };
my $n_terms = $self->{_query}->num_terms;
my $query_has_phrase = $qre =~ s/(\\ )+/.+/g;
if ($debug) {
warn "heat_sentence_starts: " . dump($heat_sentence_starts);
warn "token_list_heat: " . dump($token_list_heat);
warn "n_terms: $n_terms";
warn "phrases: " . dump( \@phrases );
warn "query_has_phrase: $query_has_phrase";
}
# find the "sentence" that each hot token appears in.
my @starts_ends;
my $i = 0;
my %heat_sentence_ends = (); # cache
for (@$token_list_heat) {
my $token = $tokens->get_token($_);
my $token_pos = $token->pos;
my $start = $heat_sentence_starts->[ $i++ ];
$heatmap{$token_pos} = $token->is_hot;
# a little optimization for when we've got
# multiple hot tokens in the same sentence
if ( exists $heat_sentence_ends{$start} ) {
$debug
and warn "found cached end $heat_sentence_ends{$start} "
. "for start $start token $token_pos\n";
push( @starts_ends,
[ $start, $token_pos, $heat_sentence_ends{$start} ] );
next;
}
# find the outermost limit of where this sentence might end
my $max_end;
# is there a "next" start?
if ( defined $heat_sentence_starts->[$i]
and $heat_sentence_starts->[$i] != $start )
{
# this token is unique in this non-final sentence
$max_end = $heat_sentence_starts->[$i] - 1;
}
else {
# this is the final sentence
$max_end = $num_tokens - 1;
}
my $end = $start;
# find the nearest sentence end to the start
while ( $end < $max_end ) {
my $tok = $tokens->get_token( $end++ );
if ( !$tok ) {
$debug and warn "No token at end=$end";
last;
}
if ( $tok->is_sentence_end ) {
$end--; # move back one position
if ($debug) {
warn "tok $_ is_sentence_end end=$end";
$tok->dump;
}
last;
}
}
# back up if we've exceeded the 0-based tokens array.
$end = $num_tokens if $end > $num_tokens;
$debug
and warn "start=$start max_end=$max_end "
. "sentence_length=$sentence_length end=$end "
. "token_pos=$token_pos\n";
# if we didn't yet set the actual hot token,
# include everything up to it.
if ( $end < $token_pos ) {
$debug
and warn "resetting end=$token_pos\n";
$end = $token_pos;
}
push( @starts_ends, [ $start, $token_pos, $end ] );
# cache
$heat_sentence_ends{$start} = $end;
}
$debug and warn "starts_ends: " . dump( \@starts_ends );
my @spans;
my %seen_pos;
START_END:
for my $start_end (@starts_ends) {
# get full window, ignoring positions we've already seen.
my $heat = 0;
my %span;
my @cluster_tokens;
my ( $start, $hot_pos, $end ) = @$start_end;
POS: for my $pos ( $start .. $end ) {
next POS if $seen_pos{$pos}++;
$heat += ( exists $heatmap{$pos} ? $heatmap{$pos} : 0 );
push( @cluster_tokens, $tokens->get_token($pos) );
}
# if we had already seen_pos all positions.
next START_END unless @cluster_tokens;
# sanity: make sure we still have something hot
my $has_hot = 0;
my @cluster_pos;
my @strings;
TOK: for (@cluster_tokens) {
my $pos = $_->pos;
$has_hot++ if exists $heatmap{$pos};
push @strings, $_->str;
push @cluster_pos, $pos;
}
next START_END unless $has_hot;
# the final string is a sentence end,
# but we only want the first char in it,
# and not any whitespace, stray punctuation or other
# non-word noise.
$strings[$#strings] =~ s/^([\.\?\!]).*/$1/;
$span{start_end} = $start_end;
$span{heat} = $heat;
$span{pos} = \@cluster_pos;
$span{tokens} = \@cluster_tokens;
$span{str} = join( '', @strings );
# spans with more *unique* hot tokens in a single span rank higher
# spans with more *proximate* hot tokens in a single span rank higher
my %uniq = ();
my $i = 0;
my $num_proximate = 1; # one for the single hot token
for (@cluster_pos) {
if ( exists $heatmap{$_} ) {
$uniq{ lc $strings[$i] } += $heatmap{$_};
if ( $i && exists $heatmap{ $cluster_pos[ $i - 2 ] } ) {
$num_proximate++;
}
}
$i++;
}
$span{unique} = scalar keys %uniq;
$span{proximate} = $num_proximate;
# no false phrase matches if !_treat_phrases_as_singles
# stemmer check because regex will likely fail
# when stemmer is on
if ( $query_has_phrase
and !$self->{_treat_phrases_as_singles} )
{
if ( !$self->{_stemmer} ) {
#warn "_treat_phrases_as_singles NOT true";
if ( $span{str} !~ m/$qre/ ) {
$debug
and warn
"treat_phrases_as_singles=FALSE and '$span{str}' failed to match $qre\n";
next START_END;
}
}
else {
# if stemmer was on, we cannot rely on the regex,
# but we assume that number of uniq terms must match query
if ( $n_terms == $query_has_phrase
&& $n_terms > $span{unique} )
{
$debug
and warn
"treat_phrases_as_singles=FALSE and '$span{str}' "
. "expected $n_terms unique terms, got $span{unique}\n";
next START_END;
}
}
}
# just for debug
if ($debug) {
my $i = 0;
$span{str_w_pos} = join(
'',
map {
$strings[ $i++ ]
. ( exists $heatmap{$_} ? $OPEN : '[' )
. $_
. ( exists $heatmap{$_} ? $CLOSE : ']' )
} @cluster_pos
);
}
push @spans, \%span;
}
$self->{spans} = $self->_sort_spans( \@spans );
$self->{heatmap} = \%heatmap;
return $self;
}
sub _sort_spans {
return [
# sort by unique,
# then by proximity
# then by heat
# then by pos
sort {
$b->{unique} <=> $a->{unique}
|| $b->{proximate} <=> $a->{proximate}
|| $b->{heat} <=> $a->{heat}
|| $a->{pos}->[0] <=> $b->{pos}->[0]
} @{ $_[1] }
];
}
sub _no_sentences {
my ( $self, $tokens, $window ) = @_;
my $lhs_window = int( $window / 2 );
my $debug = $self->debug || 0;
my $num_tokens = $tokens->len;
my $tokens_arr = $tokens->as_array;
my %heatmap = ();
my $token_list_heat = $tokens->get_heat;
# this regex is a sanity check for phrases. we replace the \ with a
# more promiscuous check because the single space is too naive
# for real text (e.g. st. john's)
my $qre = $self->{_qre};
my @phrases = @{ $self->{_query}->phrases };
my $n_terms = $self->{_query}->num_terms;
my $query_has_phrase = $qre =~ s/(\\ )+/.+/g;
if ($debug) {
warn "token_list_heat: " . dump($token_list_heat);
warn "n_terms: $n_terms";
warn "phrases: " . dump( \@phrases );
warn "query_has_phrase: $query_has_phrase";
}
# build heatmap
for (@$token_list_heat) {
my $token = $tokens->get_token($_);
$heatmap{ $token->pos } = $token->is_hot;
}
# make clusters
# $proximity == (1/4 of $window)+1 is somewhat arbitrary,
# but since we want to err in having too much context,
# we aim high. Worst case scenario is where there are
# multiple hot spots in a cluster and each is a full
# $proximity length apart, which will grow the
# eventual span far beyond $window size. We rely
# on max_chars in Snipper to catch that worst case.
my $proximity = int( $lhs_window / 2 ) + 1;
my @positions = sort { $a <=> $b } keys %heatmap;
my @clusters = ( [] );
my $i = 0;
for my $pos (@positions) {
# if we have advanced past the first position
# and the previous position is not "close" to this one,
# start a new cluster
if ( $i && ( $pos - $positions[ $i - 1 ] ) > $proximity ) {
push( @clusters, [$pos] );
}
else {
push( @{ $clusters[-1] }, $pos );
}
$i++;
}
$debug
and warn "proximity: $proximity clusters: " . dump \@clusters;
# create spans from each cluster, each with a weight.
# we do the initial sort so that clusters that overlap
# other clusters via get_window() are weeded out via %seen_pos.
my @spans;
my %seen_pos;
CLUSTER:
for my $cluster (
sort {
scalar(@$b) <=> scalar(@$a)
|| $heatmap{ $b->[0] } <=> $heatmap{ $a->[0] }
|| $a->[0] <=> $b->[0]
} @clusters
)
{
# get full window, ignoring positions we've already seen.
my $heat = 0;
my %span;
my @cluster_tokens;
POS: for my $pos (@$cluster) {
my ( $start, $end ) = $tokens->get_window( $pos, $window );
POS_TWO: for my $pos2 ( $start .. $end ) {
next if $seen_pos{$pos2}++;
$heat += ( exists $heatmap{$pos2} ? $heatmap{$pos2} : 0 );
push( @cluster_tokens, $tokens->get_token($pos2) );
}
}
# we may have skipped a $seen_pos from the $slice above
# so make sure we still start/end on a match
while ( @cluster_tokens && !$cluster_tokens[0]->is_match ) {
shift @cluster_tokens;
}
while ( @cluster_tokens && !$cluster_tokens[-1]->is_match ) {
pop @cluster_tokens;
}
next CLUSTER unless @cluster_tokens;
# sanity: make sure we still have something hot
my $has_hot = 0;
my @cluster_pos;
my @strings;
for (@cluster_tokens) {
my $pos = $_->pos;
$has_hot++ if exists $heatmap{$pos};
push @strings, $_->str;
push @cluster_pos, $pos;
}
next CLUSTER unless $has_hot;
$span{cluster} = $cluster;
$span{heat} = $heat;
$span{pos} = \@cluster_pos;
$span{tokens} = \@cluster_tokens;
$span{str} = join( '', @strings );
# spans with more *unique* hot tokens in a single span rank higher
# spans with more *proximate* hot tokens in a single span rank higher
my %uniq = ();
my $i = 0;
my $num_proximate = 1; # one for the single hot token
for (@cluster_pos) {
if ( exists $heatmap{$_} ) {
$uniq{ lc $strings[$i] } += $heatmap{$_};
if ( $i && exists $heatmap{ $cluster_pos[ $i - 2 ] } ) {
$num_proximate++;
}
}
$i++;
}
$span{unique} = scalar keys %uniq;
$span{proximate} = $num_proximate;
# no false phrase matches if !_treat_phrases_as_singles
# stemmer check because regex will likely fail when stemmer is on
if ( $query_has_phrase
and !$self->{_treat_phrases_as_singles} )
{
if ( !$self->{_stemmer} ) {
#warn "_treat_phrases_as_singles NOT true";
if ( $span{str} !~ m/$qre/ ) {
$debug
and warn
"treat_phrases_as_singles=FALSE and '$span{str}' failed to match $qre\n";
next CLUSTER;
}
}
else {
# stemmer used, so check unique term count against n_terms
if ( $n_terms == $query_has_phrase
&& $n_terms > $span{unique} )
{
$debug
and warn
"treat_phrases_as_singles=FALSE and '$span{str}' "
. "expected $n_terms but got $span{unique}\n";
next CLUSTER;
}
}
}
# just for debug
if ($debug) {
my $i = 0;
$span{str_w_pos} = join(
'',
map {
$strings[ $i++ ]
. ( exists $heatmap{$_} ? $OPEN : '[' )
. $_
. ( exists $heatmap{$_} ? $CLOSE : ']' )
} @cluster_pos
);
}
push @spans, \%span;
}
$self->{spans} = $self->_sort_spans( \@spans );
$self->{heatmap} = \%heatmap;
return $self;
}
=head2 has_spans
Returns the number of spans found.
=cut
sub has_spans {
return scalar @{ $_[0]->{spans} };
}
1;
__END__
=head1 AUTHOR
Peter Karman C<< <karman at cpan dot org> >>
=head1 ACKNOWLEDGEMENTS
The idea of the HeatMap comes from KinoSearch, though the implementation
here is original.
=head1 BUGS
Please report any bugs or feature requests to C<bug-search-tools at rt.cpan.org>, or through
the web interface at L<http://rt.cpan.org/NoAuth/ReportBug.html?Queue=Search-Tools>.
I will be notified, and then you'll
automatically be notified of progress on your bug as I make changes.
=head1 SUPPORT
You can find documentation for this module with the perldoc command.
perldoc Search::Tools
You can also look for information at:
=over 4
=item * RT: CPAN's request tracker
L<http://rt.cpan.org/NoAuth/Bugs.html?Dist=Search-Tools>
=item * AnnoCPAN: Annotated CPAN documentation
L<http://annocpan.org/dist/Search-Tools>
=item * CPAN Ratings
L<http://cpanratings.perl.org/d/Search-Tools>
=item * Search CPAN
L<http://search.cpan.org/dist/Search-Tools/>
=back
=head1 COPYRIGHT
Copyright 2009 by Peter Karman.
This package is free software; you can redistribute it and/or modify it under the
same terms as Perl itself.
=head1 SEE ALSO
KinoSearch