The examples shown below use tables in the PostgreSQL
   regression test database.
   The outputs shown are taken from version 8.3.
   The behavior of earlier (or later) versions might vary.
   Note also that since ANALYZE uses random sampling
   while producing statistics, the results will change slightly after
   any new ANALYZE.
  
Let's start with a very simple query:
EXPLAIN SELECT * FROM tenk1;
                         QUERY PLAN
-------------------------------------------------------------
 Seq Scan on tenk1  (cost=0.00..458.00 rows=10000 width=244)
   How the planner determines the cardinality of tenk1
   is covered in Section 14.2, but is repeated here for
   completeness. The number of pages and rows is looked up in
   pg_class:
SELECT relpages, reltuples FROM pg_class WHERE relname = 'tenk1';
 relpages | reltuples
----------+-----------
      358 |     10000
    These numbers are current as of the last VACUUM or
    ANALYZE on the table.  The planner then fetches the
    actual current number of pages in the table (this is a cheap operation,
    not requiring a table scan).  If that is different from
    relpages then
    reltuples is scaled accordingly to
    arrive at a current number-of-rows estimate.  In the example above, the value of
    relpages is up-to-date so the rows estimate is
    the same as reltuples.
  
   Let's move on to an example with a range condition in its
   WHERE clause:
EXPLAIN SELECT * FROM tenk1 WHERE unique1 < 1000;
                                   QUERY PLAN
--------------------------------------------------------------------------------
 Bitmap Heap Scan on tenk1  (cost=24.06..394.64 rows=1007 width=244)
   Recheck Cond: (unique1 < 1000)
   ->  Bitmap Index Scan on tenk1_unique1  (cost=0.00..23.80 rows=1007 width=0)
         Index Cond: (unique1 < 1000)
   The planner examines the WHERE clause condition
   and looks up the selectivity function for the operator
   < in pg_operator.
   This is held in the column oprrest,
   and the entry in this case is scalarltsel.
   The scalarltsel function retrieves the histogram for
   unique1 from
   pg_statistic.  For manual queries it is more
   convenient to look in the simpler pg_stats
   view:
SELECT histogram_bounds FROM pg_stats
WHERE tablename='tenk1' AND attname='unique1';
                   histogram_bounds
------------------------------------------------------
 {0,993,1997,3050,4040,5036,5957,7057,8029,9016,9995}
Next the fraction of the histogram occupied by “< 1000” is worked out. This is the selectivity. The histogram divides the range into equal frequency buckets, so all we have to do is locate the bucket that our value is in and count part of it and all of the ones before. The value 1000 is clearly in the second bucket (993-1997). Assuming a linear distribution of values inside each bucket, we can calculate the selectivity as:
selectivity = (1 + (1000 - bucket[2].min)/(bucket[2].max - bucket[2].min))/num_buckets
            = (1 + (1000 - 993)/(1997 - 993))/10
            = 0.100697
   that is, one whole bucket plus a linear fraction of the second, divided by
   the number of buckets. The estimated number of rows can now be calculated as
   the product of the selectivity and the cardinality of
   tenk1:
rows = rel_cardinality * selectivity
     = 10000 * 0.100697
     = 1007  (rounding off)
   Next let's consider an example with an equality condition in its
   WHERE clause:
EXPLAIN SELECT * FROM tenk1 WHERE stringu1 = 'CRAAAA';
                        QUERY PLAN
----------------------------------------------------------
 Seq Scan on tenk1  (cost=0.00..483.00 rows=30 width=244)
   Filter: (stringu1 = 'CRAAAA'::name)
   Again the planner examines the WHERE clause condition
   and looks up the selectivity function for =, which is
   eqsel.  For equality estimation the histogram is
   not useful; instead the list of most
   common values (MCVs) is used to determine the
   selectivity. Let's have a look at the MCVs, with some additional columns
   that will be useful later:
SELECT null_frac, n_distinct, most_common_vals, most_common_freqs FROM pg_stats
WHERE tablename='tenk1' AND attname='stringu1';
null_frac         | 0
n_distinct        | 676
most_common_vals  | {EJAAAA,BBAAAA,CRAAAA,FCAAAA,FEAAAA,GSAAAA,JOAAAA,MCAAAA,NAAAAA,WGAAAA}
most_common_freqs | {0.00333333,0.003,0.003,0.003,0.003,0.003,0.003,0.003,0.003,0.003}
   Since CRAAAA appears in the list of MCVs, the selectivity is
   merely the corresponding entry in the list of most common frequencies
   (MCFs):
selectivity = mcf[3]
            = 0.003
   As before, the estimated number of rows is just the product of this with the
   cardinality of tenk1:
rows = 10000 * 0.003
     = 30
Now consider the same query, but with a constant that is not in the MCV list:
EXPLAIN SELECT * FROM tenk1 WHERE stringu1 = 'xxx';
                        QUERY PLAN
----------------------------------------------------------
 Seq Scan on tenk1  (cost=0.00..483.00 rows=15 width=244)
   Filter: (stringu1 = 'xxx'::name)
This is quite a different problem: how to estimate the selectivity when the value is not in the MCV list. The approach is to use the fact that the value is not in the list, combined with the knowledge of the frequencies for all of the MCVs:
selectivity = (1 - sum(mvf))/(num_distinct - num_mcv)
            = (1 - (0.00333333 + 0.003 + 0.003 + 0.003 + 0.003 + 0.003 +
                    0.003 + 0.003 + 0.003 + 0.003))/(676 - 10)
            = 0.0014559
That is, add up all the frequencies for the MCVs and subtract them from one, then divide by the number of other distinct values. This amounts to assuming that the fraction of the column that is not any of the MCVs is evenly distributed among all the other distinct values. Notice that there are no null values so we don't have to worry about those (otherwise we'd subtract the null fraction from the numerator as well). The estimated number of rows is then calculated as usual:
rows = 10000 * 0.0014559
     = 15  (rounding off)
   The previous example with unique1 < 1000 was an
   oversimplification of what scalarltsel really does;
   now that we have seen an example of the use of MCVs, we can fill in some
   more detail.  The example was correct as far as it went, because since
   unique1 is a unique column it has no MCVs (obviously, no
   value is any more common than any other value).  For a non-unique
   column, there will normally be both a histogram and an MCV list, and
   the histogram does not include the portion of the column
   population represented by the MCVs.  We do things this way because
   it allows more precise estimation.  In this situation
   scalarltsel directly applies the condition (e.g.,
   “< 1000”) to each value of the MCV list, and adds up the
   frequencies of the MCVs for which the condition is true.  This gives
   an exact estimate of the selectivity within the portion of the table
   that is MCVs.  The histogram is then used in the same way as above
   to estimate the selectivity in the portion of the table that is not
   MCVs, and then the two numbers are combined to estimate the overall
   selectivity.  For example, consider
EXPLAIN SELECT * FROM tenk1 WHERE stringu1 < 'IAAAAA';
                         QUERY PLAN
------------------------------------------------------------
 Seq Scan on tenk1  (cost=0.00..483.00 rows=3077 width=244)
   Filter: (stringu1 < 'IAAAAA'::name)
   We already saw the MCV information for stringu1,
   and here is its histogram:
SELECT histogram_bounds FROM pg_stats
WHERE tablename='tenk1' AND attname='stringu1';
                                histogram_bounds
--------------------------------------------------------------------------------
 {AAAAAA,CQAAAA,FRAAAA,IBAAAA,KRAAAA,NFAAAA,PSAAAA,SGAAAA,VAAAAA,XLAAAA,ZZAAAA}
   Checking the MCV list, we find that the condition stringu1 <
   'IAAAAA' is satisfied by the first six entries and not the last four,
   so the selectivity within the MCV part of the population is
selectivity = sum(relevant mvfs)
            = 0.00333333 + 0.003 + 0.003 + 0.003 + 0.003 + 0.003
            = 0.01833333
   Summing all the MCFs also tells us that the total fraction of the
   population represented by MCVs is 0.03033333, and therefore the
   fraction represented by the histogram is 0.96966667 (again, there
   are no nulls, else we'd have to exclude them here).  We can see
   that the value IAAAAA falls nearly at the end of the
   third histogram bucket.  Using some rather cheesy assumptions
   about the frequency of different characters, the planner arrives
   at the estimate 0.298387 for the portion of the histogram population
   that is less than IAAAAA.  We then combine the estimates
   for the MCV and non-MCV populations:
selectivity = mcv_selectivity + histogram_selectivity * histogram_fraction
            = 0.01833333 + 0.298387 * 0.96966667
            = 0.307669
rows        = 10000 * 0.307669
            = 3077  (rounding off)
In this particular example, the correction from the MCV list is fairly small, because the column distribution is actually quite flat (the statistics showing these particular values as being more common than others are mostly due to sampling error). In a more typical case where some values are significantly more common than others, this complicated process gives a useful improvement in accuracy because the selectivity for the most common values is found exactly.
   Now let's consider a case with more than one
   condition in the WHERE clause:
EXPLAIN SELECT * FROM tenk1 WHERE unique1 < 1000 AND stringu1 = 'xxx';
                                   QUERY PLAN
--------------------------------------------------------------------------------
 Bitmap Heap Scan on tenk1  (cost=23.80..396.91 rows=1 width=244)
   Recheck Cond: (unique1 < 1000)
   Filter: (stringu1 = 'xxx'::name)
   ->  Bitmap Index Scan on tenk1_unique1  (cost=0.00..23.80 rows=1007 width=0)
         Index Cond: (unique1 < 1000)
The planner assumes that the two conditions are independent, so that the individual selectivities of the clauses can be multiplied together:
selectivity = selectivity(unique1 < 1000) * selectivity(stringu1 = 'xxx')
            = 0.100697 * 0.0014559
            = 0.0001466
rows        = 10000 * 0.0001466
            = 1  (rounding off)
Notice that the number of rows estimated to be returned from the bitmap index scan reflects only the condition used with the index; this is important since it affects the cost estimate for the subsequent heap fetches.
Finally we will examine a query that involves a join:
EXPLAIN SELECT * FROM tenk1 t1, tenk2 t2
WHERE t1.unique1 < 50 AND t1.unique2 = t2.unique2;
                                      QUERY PLAN
--------------------------------------------------------------------------------------
 Nested Loop  (cost=4.64..456.23 rows=50 width=488)
   ->  Bitmap Heap Scan on tenk1 t1  (cost=4.64..142.17 rows=50 width=244)
         Recheck Cond: (unique1 < 50)
         ->  Bitmap Index Scan on tenk1_unique1  (cost=0.00..4.63 rows=50 width=0)
               Index Cond: (unique1 < 50)
   ->  Index Scan using tenk2_unique2 on tenk2 t2  (cost=0.00..6.27 rows=1 width=244)
         Index Cond: (unique2 = t1.unique2)
   The restriction on tenk1,
   unique1 < 50,
   is evaluated before the nested-loop join.
   This is handled analogously to the previous range example.  This time the
   value 50 falls into the first bucket of the
   unique1 histogram:
selectivity = (0 + (50 - bucket[1].min)/(bucket[1].max - bucket[1].min))/num_buckets
            = (0 + (50 - 0)/(993 - 0))/10
            = 0.005035
rows        = 10000 * 0.005035
            = 50  (rounding off)
   The restriction for the join is t2.unique2 = t1.unique2.
   The operator is just
   our familiar =, however the selectivity function is
   obtained from the oprjoin column of
   pg_operator, and is eqjoinsel.
   eqjoinsel looks up the statistical information for both
   tenk2 and tenk1:
SELECT tablename, null_frac,n_distinct, most_common_vals FROM pg_stats
WHERE tablename IN ('tenk1', 'tenk2') AND attname='unique2';
tablename  | null_frac | n_distinct | most_common_vals
-----------+-----------+------------+------------------
 tenk1     |         0 |         -1 |
 tenk2     |         0 |         -1 |
   In this case there is no MCV information for
   unique2 because all the values appear to be
   unique, so we use an algorithm that relies only on the number of
   distinct values for both relations together with their null fractions:
selectivity = (1 - null_frac1) * (1 - null_frac2) * min(1/num_distinct1, 1/num_distinct2)
            = (1 - 0) * (1 - 0) / max(10000, 10000)
            = 0.0001
This is, subtract the null fraction from one for each of the relations, and divide by the maximum of the numbers of distinct values. The number of rows that the join is likely to emit is calculated as the cardinality of the Cartesian product of the two inputs, multiplied by the selectivity:
rows = (outer_cardinality * inner_cardinality) * selectivity
     = (50 * 10000) * 0.0001
     = 50
   Had there been MCV lists for the two columns,
   eqjoinsel would have used direct comparison of the MCV
   lists to determine the join selectivity within the part of the column
   populations represented by the MCVs.  The estimate for the remainder of the
   populations follows the same approach shown here.
  
   Notice that we showed inner_cardinality as 10000, that is,
   the unmodified size of tenk2.  It might appear from
   inspection of the EXPLAIN output that the estimate of
   join rows comes from 50 * 1, that is, the number of outer rows times
   the estimated number of rows obtained by each inner index scan on
   tenk2.  But this is not the case: the join relation size
   is estimated before any particular join plan has been considered.  If
   everything is working well then the two ways of estimating the join
   size will produce about the same answer, but due to round-off error and
   other factors they sometimes diverge significantly.
  
   For those interested in further details, estimation of the size of
   a table (before any WHERE clauses) is done in
   src/backend/optimizer/util/plancat.c. The generic
   logic for clause selectivities is in
   src/backend/optimizer/path/clausesel.c.  The
   operator-specific selectivity functions are mostly found
   in src/backend/utils/adt/selfuncs.c.