# phpman > man > CREATE_STATISTICS(7)

CREATE [STATISTICS(7)](https://www.chedong.com/phpMan.php/man/STATISTICS/7/markdown)               PostgreSQL 14.23 Documentation               CREATE [STATISTICS(7)](https://www.chedong.com/phpMan.php/man/STATISTICS/7/markdown)



## NAME
       CREATE_STATISTICS - define extended statistics

## SYNOPSIS
       CREATE STATISTICS [ IF NOT EXISTS ] _statistics_name_
           ON ( _expression_ )
           FROM _table_name_

       CREATE STATISTICS [ IF NOT EXISTS ] _statistics_name_
           [ ( _statistics_kind_ [, ... ] ) ]
           ON { _column_name_ | ( _expression_ ) }, { _column_name_ | ( _expression_ ) } [, ...]
           FROM _table_name_

## DESCRIPTION
       **CREATE** **STATISTICS** will create a new extended statistics object tracking data about the
       specified table, foreign table or materialized view. The statistics object will be created in
       the current database and will be owned by the user issuing the command.

       The **CREATE** **STATISTICS** command has two basic forms. The first form allows univariate
       statistics for a single expression to be collected, providing benefits similar to an
       expression index without the overhead of index maintenance. This form does not allow the
       statistics kind to be specified, since the various statistics kinds refer only to
       multivariate statistics. The second form of the command allows multivariate statistics on
       multiple columns and/or expressions to be collected, optionally specifying which statistics
       kinds to include. This form will also automatically cause univariate statistics to be
       collected on any expressions included in the list.

       If a schema name is given (for example, CREATE STATISTICS myschema.mystat ...) then the
       statistics object is created in the specified schema. Otherwise it is created in the current
       schema. The name of the statistics object must be distinct from the name of any other
       statistics object in the same schema.

## PARAMETERS
       IF NOT EXISTS
           Do not throw an error if a statistics object with the same name already exists. A notice
           is issued in this case. Note that only the name of the statistics object is considered
           here, not the details of its definition.

       _statistics_name_
           The name (optionally schema-qualified) of the statistics object to be created.

       _statistics_kind_
           A multivariate statistics kind to be computed in this statistics object. Currently
           supported kinds are ndistinct, which enables n-distinct statistics, dependencies, which
           enables functional dependency statistics, and mcv which enables most-common values lists.
           If this clause is omitted, all supported statistics kinds are included in the statistics
           object. Univariate expression statistics are built automatically if the statistics
           definition includes any complex expressions rather than just simple column references.
           For more information, see Section 14.2.2 and Section 72.2.

       _column_name_
           The name of a table column to be covered by the computed statistics. This is only allowed
           when building multivariate statistics. At least two column names or expressions must be
           specified, and their order is not significant.

       _expression_
           An expression to be covered by the computed statistics. This may be used to build
           univariate statistics on a single expression, or as part of a list of multiple column
           names and/or expressions to build multivariate statistics. In the latter case, separate
           univariate statistics are built automatically for each expression in the list.

       _table_name_
           The name (optionally schema-qualified) of the table containing the column(s) the
           statistics are computed on; see [**ANALYZE**(7)](https://www.chedong.com/phpMan.php/man/ANALYZE/7/markdown) for an explanation of the handling of
           inheritance and partitions.

## NOTES
       You must be the owner of a table to create a statistics object reading it. Once created,
       however, the ownership of the statistics object is independent of the underlying table(s).

       Expression statistics are per-expression and are similar to creating an index on the
       expression, except that they avoid the overhead of index maintenance. Expression statistics
       are built automatically for each expression in the statistics object definition.

       Extended statistics are not currently used by the planner for selectivity estimations made
       for table joins. This limitation will likely be removed in a future version of PostgreSQL.

## EXAMPLES
       Create table t1 with two functionally dependent columns, i.e., knowledge of a value in the
       first column is sufficient for determining the value in the other column. Then functional
       dependency statistics are built on those columns:

           CREATE TABLE t1 (
               a   int,
               b   int
           );

           INSERT INTO t1 SELECT i/100, i/500
                            FROM generate_series(1,1000000) s(i);

           ANALYZE t1;

           -- the number of matching rows will be drastically underestimated:
           EXPLAIN ANALYZE SELECT * FROM t1 WHERE (a = 1) AND (b = 0);

           CREATE STATISTICS s1 (dependencies) ON a, b FROM t1;

           ANALYZE t1;

           -- now the row count estimate is more accurate:
           EXPLAIN ANALYZE SELECT * FROM t1 WHERE (a = 1) AND (b = 0);

       Without functional-dependency statistics, the planner would assume that the two WHERE
       conditions are independent, and would multiply their selectivities together to arrive at a
       much-too-small row count estimate. With such statistics, the planner recognizes that the
       WHERE conditions are redundant and does not underestimate the row count.

       Create table t2 with two perfectly correlated columns (containing identical data), and an MCV
       list on those columns:

           CREATE TABLE t2 (
               a   int,
               b   int
           );

           INSERT INTO t2 SELECT mod(i,100), mod(i,100)
                            FROM generate_series(1,1000000) s(i);

           CREATE STATISTICS s2 (mcv) ON a, b FROM t2;

           ANALYZE t2;

           -- valid combination (found in MCV)
           EXPLAIN ANALYZE SELECT * FROM t2 WHERE (a = 1) AND (b = 1);

           -- invalid combination (not found in MCV)
           EXPLAIN ANALYZE SELECT * FROM t2 WHERE (a = 1) AND (b = 2);

       The MCV list gives the planner more detailed information about the specific values that
       commonly appear in the table, as well as an upper bound on the selectivities of combinations
       of values that do not appear in the table, allowing it to generate better estimates in both
       cases.

       Create table t3 with a single timestamp column, and run queries using expressions on that
       column. Without extended statistics, the planner has no information about the data
       distribution for the expressions, and uses default estimates. The planner also does not
       realize that the value of the date truncated to the month is fully determined by the value of
       the date truncated to the day. Then expression and ndistinct statistics are built on those
       two expressions:

           CREATE TABLE t3 (
               a   timestamp
           );

           INSERT INTO t3 SELECT i FROM generate_series('2020-01-01'::timestamp,
                                                        '2020-12-31'::timestamp,
                                                        '1 minute'::interval) s(i);

           ANALYZE t3;

           -- the number of matching rows will be drastically underestimated:
           EXPLAIN ANALYZE SELECT * FROM t3
             WHERE date_trunc('month', a) = '2020-01-01'::timestamp;

           EXPLAIN ANALYZE SELECT * FROM t3
             WHERE date_trunc('day', a) BETWEEN '2020-01-01'::timestamp
                                            AND '2020-06-30'::timestamp;

           EXPLAIN ANALYZE SELECT date_trunc('month', a), date_trunc('day', a)
              FROM t3 GROUP BY 1, 2;

           -- build ndistinct statistics on the pair of expressions (per-expression
           -- statistics are built automatically)
           CREATE STATISTICS s3 (ndistinct) ON date_trunc('month', a), date_trunc('day', a) FROM t3;

           ANALYZE t3;

           -- now the row count estimates are more accurate:
           EXPLAIN ANALYZE SELECT * FROM t3
             WHERE date_trunc('month', a) = '2020-01-01'::timestamp;

           EXPLAIN ANALYZE SELECT * FROM t3
             WHERE date_trunc('day', a) BETWEEN '2020-01-01'::timestamp
                                            AND '2020-06-30'::timestamp;

           EXPLAIN ANALYZE SELECT date_trunc('month', a), date_trunc('day', a)
              FROM t3 GROUP BY 1, 2;

       Without expression and ndistinct statistics, the planner has no information about the number
       of distinct values for the expressions, and has to rely on default estimates. The equality
       and range conditions are assumed to have 0.5% selectivity, and the number of distinct values
       in the expression is assumed to be the same as for the column (i.e. unique). This results in
       a significant underestimate of the row count in the first two queries. Moreover, the planner
       has no information about the relationship between the expressions, so it assumes the two
       WHERE and GROUP BY conditions are independent, and multiplies their selectivities together to
       arrive at a severe overestimate of the group count in the aggregate query. This is further
       exacerbated by the lack of accurate statistics for the expressions, forcing the planner to
       use a default ndistinct estimate for the expression derived from ndistinct for the column.
       With such statistics, the planner recognizes that the conditions are correlated, and arrives
       at much more accurate estimates.

## COMPATIBILITY
       There is no **CREATE** **STATISTICS** command in the SQL standard.

## SEE ALSO
       ALTER STATISTICS (**ALTER**___**[STATISTICS**(7)](https://www.chedong.com/phpMan.php/man/STATISTICS/7/markdown)), DROP STATISTICS (**DROP**___**[STATISTICS**(7)](https://www.chedong.com/phpMan.php/man/STATISTICS/7/markdown))



PostgreSQL 14.23                                2026                            CREATE [STATISTICS(7)](https://www.chedong.com/phpMan.php/man/STATISTICS/7/markdown)
