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I need to create a ranking of similar strings in a table.

I have the following table

create table names (
name character varying(255)
);

Currently, I'm using pg_trgm module which offers the similarity function, but I have an efficiency problem. I created an index like the Postgres manual suggests:

CREATE INDEX trgm_idx ON names USING gist (name gist_trgm_ops);

and I'm executing the following query:

select (similarity(n1.name, n2.name)) as sim, n1.name, n2.name
from names n1, names n2
where n1.name != n2.name and similarity(n1.name, n2.name) > .8
order by sim desc;

The query works, but is really slow when you have hundreds of names. Moreover, maybe I forgot a bit of SQL, but I don't understand why I cannot use the condition and sim > .8 without getting a "column sim doesn't exist" error.

I'd like any hint to make the query faster.

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1 Answer 1

up vote 21 down vote accepted

Use set_limit() and the % operator instead. Both are provided by the pg_trgm module.

The way you have it, the similarity between every element and every other element of the table has to be calculated (almost a cross join). If your table has 1000 rows, that is 1,000,000 (!) calculated similarities, before those can be checked against the condition and sorted. Try:

SELECT set_limit(0.8);

SELECT similarity(n1.name, n2.name) AS sim, n1.name, n2.name
FROM   names n1
JOIN   names n2 ON n1.name <> n2.name
               AND n1.name % n2.name
ORDER  BY sim DESC;

Should be faster by an order of magnitude, but it will still be slow.

You may want to restrict the number of possible pairs by introducing more preconditions (like matching first letter) before cross joining. The performance of a cross join deteriorates quadratically with the growing number of records - O(N²).


As to your subsidiary question:

WHERE ... sim > 0.8

Does not work because you cannot refer to output columns in WHERE or HAVING clauses. That's according to the (a bit confusing, granted) SQL standard - which is handled rather loosely by certain other RDBMS.

On the other hand:

ORDER BY sim DESC

Works because output columns can be used in GROUP BY and ORDER BY. Details:


Test case:

I ran a quick test on my old test server to verify my claims.
PostgreSQL 9.1.4. Times taken with EXPLAIN ANALYZE (best of five).

CREATE TEMP table t AS 
SELECT some_col AS name FROM some_table LIMIT 1000;  -- real life test strings

First round of tests with GIN index:

CREATE INDEX t_gin ON t USING gin(name gin_trgm_ops);  -- round1: with GIN index

Second round of tests with GIST index:

DROP INDEX t_gin;
CREATE INDEX t_gist ON t USING gist(name gist_trgm_ops);

New query:

-- SELECT show_limit();
SELECT set_limit(0.8);   -- fewer hits and faster with higher limit

SELECT similarity(n1.name, n2.name) AS sim, n1.name, n2.name
FROM   t n1
JOIN   t n2 ON n1.name <> n2.name
           AND n1.name % n2.name
ORDER  BY sim DESC;

GIN index used, 64 hits: total runtime: 484.022 ms
GIST index used, 64 hits: total runtime: 248.772 ms

Old query:

SELECT (similarity(n1.name, n2.name)) as sim, n1.name, n2.name
FROM   t n1, t n2
WHERE  n1.name != n2.name
AND    similarity(n1.name, n2.name) > 0.8
ORDER  BY sim DESC;

GIN index not used, 64 hits: total runtime: 6345.833 ms
GIST index not used, 64 hits: total runtime: 6335.975 ms

Otherwise identical results. Advice is good. And this is for just 1000 rows.

share|improve this answer
    
Wonderful answer, thank you. You're right, I could add a condition on the matching of the first letter, but in those "names" I have names and surnames, sometimes written as "name, surname", sometimes as "surname, name" ... My additional question wasn't related to the use of the alias in the order by, but in the where condition. I thought the similarity could be calculated once for each pair. –  cdarwin Jun 28 '12 at 20:41
    
@cdarwin: Ah, I got your subsidiary question wrong, sorry. Amended now. The information was still good - in particular, the link I provided applies, regardless. –  Erwin Brandstetter Jun 28 '12 at 20:58

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