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MEANS [TABLES =]
      {var_list}
        [ BY {var_list} [BY {var_list} [BY {var_list} … ]]]
      [ /{var_list}
         [ BY {var_list} [BY {var_list} [BY {var_list} … ]]] ]
      [/CELLS = [MEAN] [COUNT] [STDDEV] [SEMEAN] [SUM] [MIN] [MAX] [RANGE]
        [VARIANCE] [KURT] [SEKURT]
        [SKEW] [SESKEW] [FIRST] [LAST]
        [HARMONIC] [GEOMETRIC]
        [DEFAULT]
        [ALL]
        [NONE] ]
      [/MISSING = [INCLUDE] [DEPENDENT]]
You can use the MEANS command to calculate the arithmetic mean and similar
statistics, either for the dataset as a whole or for categories of data.
The simplest form of the command is
MEANS v.
which calculates the mean, count and standard deviation for v. If you specify a grouping variable, for example
MEANS v BY g.
then the means, counts and standard deviations for v after having been grouped by g are calculated. Instead of the mean, count and standard deviation, you could specify the statistics in which you are interested:
MEANS x y BY g
      /CELLS = HARMONIC SUM MIN.
This example calculates the harmonic mean, the sum and the minimum values of x and y grouped by g.
The CELLS subcommand specifies which statistics to calculate.  The available statistics
are:
MEAN
      The arithmetic mean.
COUNT
      The count of the values.
STDDEV
      The standard deviation.
SEMEAN
      The standard error of the mean.
SUM
      The sum of the values.
MIN
      The minimum value.
MAX
      The maximum value.
RANGE
      The difference between the maximum and minimum values.
VARIANCE
      The variance.
FIRST
      The first value in the category.
LAST
      The last value in the category.
SKEW
      The skewness.
SESKEW
      The standard error of the skewness.
KURT
      The kurtosis
SEKURT
      The standard error of the kurtosis.
HARMONIC
      The harmonic mean.
GEOMETRIC
      The geometric mean.
In addition, three special keywords are recognized:
DEFAULT
      This is the same as MEAN COUNT STDDEV.
ALL
      All of the above statistics are calculated.
NONE
      No statistics are calculated (only a summary is shown).
More than one table can be specified in a single command. Each table is separated by a ‘/’. For example
MEANS TABLES =
      c d e BY x
      /a b BY x y
      /f BY y BY z.
has three tables (the ‘TABLE =’ is optional). The first table has three dependent variables c, d and e and a single categorical variable x. The second table has two dependent variables a and b, and two categorical variables x and y. The third table has a single dependent variables f and a categorical variable formed by the combination of y and z.
By default values are omitted from the analysis only if missing values
(either system missing or user missing)
for any of the variables directly involved in their calculation are
encountered.
This behaviour can be modified with the  /MISSING subcommand.
Three options are possible: TABLE, INCLUDE and DEPENDENT.
/MISSING = INCLUDE says that user missing values, either in the dependent
variables or in the categorical variables should be taken at their face
value, and not excluded.
/MISSING = DEPENDENT says that user missing values, in the dependent
variables should be taken at their face value, however cases which
have user missing values for the categorical variables should be omitted
from the calculation.
The dataset in repairs.sav contains the mean time between failures (mtbf) for a sample of artifacts produced by different factories and trialed under different operating conditions. Since there are four combinations of categorical variables, by simply looking at the list of data, it would be hard to how the scores vary for each category. Example 15.4 shows one way of tabulating the mtbf in a way which is easier to understand.
get file='repairs.sav'.
means tables = mtbf
      by factory by environment.
 | 
Example 15.4: Running MEANS on the mtbf score with categories factory and environment
The results are shown in Result 15.3.   The figures shown indicate the mean,
standard deviation and number of samples in each category.
These figures however do not indicate whether the results are statistically
significant.  For that, you would need to use the procedures ONEWAY, GLM or
T-TEST depending on the hypothesis being tested.
 
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Result 15.3: The mtbf categorised by factory and environment
Note that there is no limit to the number of variables for which you can calculate
statistics, nor to the number of categorical variables per layer, nor the number
of layers.
However, running MEANS on a large numbers of variables, or with categorical variables
containing a large number of distinct values may result in an extremely large output, which
will not be easy to interpret.
So you should consider carefully which variables to select for participation in the analysis.
Next: NPAR TESTS, Previous: LOGISTIC REGRESSION, Up: Statistics [Contents][Index]