postgres/contrib/pg_trgm
Teodor Sigaev cbfa4092bb trgm - Trigram matching for PostgreSQL
--------------------------------------

	The pg_trgm contrib module provides functions and index classes
	for determining the similarity of text based on trigram
	matching.
2004-05-31 17:18:12 +00:00
..
data
expected
sql
Makefile
pg_trgm.sql.in
README.pg_trgm
trgm_gist.c
trgm_op.c
trgm.h

trgm - Trigram matching for PostgreSQL
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Introduction

	This module is sponsored by Delta-Soft Ltd., Moscow, Russia.

	The pg_trgm contrib module provides functions and index classes
	for determining the similarity of text based on trigram
	matching.

Definitions

	Trigram (or Trigraph)

	A trigram is a set of three consecutive characters taken
	from a string.  A string is considered to have two spaces
	prefixed and one space suffixed when determining the set
	of trigrams that comprise the string.

	eg. The set of trigrams in the word "cat" is "  c", " ca", 
	"at " and "cat".

Public Functions

	real similarity(text, text)

	Returns a number that indicates how closely matches the two
	arguments are.  A zero result indicates that the two words
	are completely dissimilar, and a result of one indicates that
	the two words are identical.

	real show_limit()

	Returns the current similarity threshold used by the '%'
	operator.  This in effect sets the minimum similarity between
	two words in order that they be considered similar enough to
	be misspellings of each other, for example.

	real set_limit(real)

	Sets the current similarity threshold that is used by the '%'
	operator, and is returned by the show_limit() function.

	text[] show_trgm(text)

	Returns an array of all the trigrams of the supplied text
	parameter.

Public Operators

	text % text (returns boolean)

	The '%' operator returns TRUE if its two arguments have a similarity
	that is greater than the similarity threshold set by set_limit(). It
	will return FALSE if the similarity is less than the current
	threshold.

Public Index Operator Classes

	gist_trgm_ops

	The pg_trgm module comes with an index operator class that allows a
	developer to create an index over a text column for the purpose
	of very fast similarity searches.

	To use this index, the '%' operator must be used and an appropriate
	similarity threshold for the application must be set.

	eg.

	CREATE TABLE test_trgm (t text);
	CREATE INDEX trgm_idx ON test_trgm USING gist (t gist_trgm_ops);
	
	At this point, you will have an index on the t text column that you
	can use for similarity searching.

	eg.

	SELECT
		t,
		similarity(t, 'word') AS sml
	FROM
		test_trgm
	WHERE
		t % 'word'
	ORDER BY
		sml DESC, t;

	This will return all values in the text column that are sufficiently
	similar to 'word', sorted from best match to worst.  The index will
	be used to make this a fast operation over very large data sets.

Tsearch2 Integration

	Trigram matching is a very useful tool when used in conjunction
	with a text index created by the Tsearch2 contrib module. (See
	contrib/tsearch2)

	The first step is to generate an auxiliary table containing all
	the unique words in the Tsearch2 index:

	CREATE TABLE words AS 
		SELECT word FROM stat('SELECT vector FROM documents');

	Where 'documents' is the table that contains the Tsearch2 index
	column 'vector', of type 'tsvector'.

	Next, create a trigram index on the word column:

	CREATE INDEX words_idx ON words USING gist(word gist_trgm_ops);

	Now, a SELECT query similar to the example above can be used to
	suggest spellings for misspelled words in user search terms. A
	useful extra clause is to ensure that the similar words are also
	of similar length to the misspelled word.

	Note: Since the 'words' table has been generated as a separate,
	static table, it will need to be periodically regenerated so that
	it remains up to date with the word list in the Tsearch2 index.

Authors

	Oleg Bartunov <oleg@sai.msu.su>, Moscow, Moscow University, Russia
	Teodor Sigaev <teodor@sigaev.ru>, Moscow, Delta-Soft Ltd.,Russia
       
Contributors

	Christopher Kings-Lynne wrote this README file

References

	Tsearch2 Development Site
	http://www.sai.msu.su/~megera/postgres/gist/tsearch/V2/
	
	GiST Development Site
	http://www.sai.msu.su/~megera/postgres/gist/