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I am using the SQL query

    SELECT round(avg(int_value)) AS modal_value FROM t;

to obtain modal value, that, of couse, not is correct, but is a first option to show some result.

So, my question is, "How to do the thing right?".

With PostgreSQL 8.3+ we can use this user-defined agregate to define mode:

CREATE FUNCTION _final_mode(anyarray) RETURNS anyelement AS $f$
    SELECT a FROM unnest($1) a
    LIMIT 1;
CREATE AGGREGATE mode(anyelement) (
  SFUNC=array_append,  STYPE=anyarray,
  FINALFUNC=_final_mode, INITCOND='{}'

but, as an user-defined average, with big tables it can be slow (compare sum/count with buildin AVG function). With PostgreSQL 9+, there are no direct (buildin) function for calculate statistical mode value? Perhaps using pg_stats... How to do something like

    SELECT (most_common_vals(int_value))[1] AS modal_value FROM t;

The pg_stats VIEW can be used for this kind of task (even once, by hand)?

share|improve this question
pg_stat view (as any table/view, that deal with planner statistics) contains only estimates, not the exact value. – Igor Romanchenko Apr 24 '13 at 11:30

You can try something like:

SELECT int_value, count(*)
GROUP BY int_value
ORDER BY count(*) DESC

The idea behind it - you get the count for every int_value, then order them (so that the biggest count goes first), then LIMIT the query to first row only, to get the int_value with highest count only.

share|improve this answer
Thanks! Well, I understand that my dream of "buildin function" is only a dream.... is it? About your query, check if it is not "exactly" (not generalized for aggregation) the same algorithm than my cited link, at _final_mode() function. – Peter Krauss Apr 24 '13 at 14:03
@PeterKrauss Yes, the idea is the same, just applied directly, without collectiong into array and unnesting. – Igor Romanchenko Apr 24 '13 at 16:08

If you want to do it by groups:

    int_value * 10 / (select max(int_value) from t) g,
    min(int_value) "from",
    max(int_value) "to",
    count(*) total
from t
group by 1
order by 4 desc
share|improve this answer
Thanks @ClonaldoNeto, this is a good solution (!) for scalars and measures, to detect "modal intervals". – Peter Krauss Apr 26 '13 at 14:50
PS for reader: the first line (limit 1) is the mode; if you change 10 by 30 or by 100 you get more (and tiny) intervals; and to list intervals use "order by 1". – Peter Krauss Apr 26 '13 at 14:53
up vote 0 down vote accepted

At the question introductiom I cited this link with a good SQL-coded solution (and @IgorRomanchenko used the same algorithm in this answer). @ClodoaldoNeto shows a "new solution", but is for scalars and measures as I comment, not is an answer for the current question.

Pasted 2 months and ~40Views, no new issue...


Conclusions using only informations (and evidence of the absence of further info) of this page and cited links. Summary:

  1. The user-defined aggregate mode() is enough, we not need a build-in (compiled) version.

  2. There are no infrastructure for optimizations, a build-in do the something than the user-defined.

I tested the cited SQL aggregate function , in contexts like

SELECT mode(some_value) AS modal_value FROM t;

And, on my tests, it was fast... So, not justify an "build-in function" (like STATS_MODE of Oracle), only in a "statistical package" demand context -- but if you will spend time and memory to install something I suggest R language.

Another implicit question, was about a statistical package "preparing" or making use of some PostgreSQL-infrastructure (like pg_stats)... A good clue for a "canonical answer" is at the comment of @IgorRomanchenko: "pg_stat (...) contains only estimates, not the exact value". So, mode function can not make use of infrastructure, as I supposed.

NOTE: we must remember that, for "modal intervals", we can use another function, see @ClodoaldoNeto's answer.

share|improve this answer

The mode is of the most value that has occurred, so I sobreescrevi the function I found here and I made this:

CREATE OR REPLACE FUNCTION _final_mode(anyarray)
  RETURNS anyelement AS
            WHEN t1.cnt <> t2.cnt THEN t1.a 
            ELSE NULL 
            (SELECT a, COUNT(*) AS cnt
             FROM unnest($1) a
             WHERE a IS NOT NULL
             GROUP BY 1 
             ORDER BY COUNT(*) DESC, 1
             LIMIT 1
            ) as t1, 
            (SELECT a,
             COUNT(*) AS cnt
             FROM unnest($1) a
             WHERE a IS NOT NULL
             GROUP BY 1 
             ORDER BY COUNT(*) DESC, 1
             LIMIT 2 OFFSET 1
            ) as t2

-- Tell Postgres how to use our aggregate
CREATE AGGREGATE mode(anyelement) (
  SFUNC=array_append, --Function to call for each row. Just builds the array
  FINALFUNC=_final_mode, --Function to call after everything has been added to array
  INITCOND='{}' --Initialize an empty array when starting
share|improve this answer
Hello Bruno. I posted above a comment to IgorRomanchenko with this same wiki link... Check if our discution cover your answer (also the agregate function I was present above as _final_mode). The question is not about "how to reproduce the mode with SQL", but "where the PostgreSQL's build-in function" that do fast this kind of operarion. – Peter Krauss Oct 21 '14 at 18:29

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