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I would be very thankful if you could give me some hints (how to do or what procedures to have a look at) on the following issue:

If, for example, I have a dataset that contain (for each brand) 4 character variables and 3 numerical variables, then I would like to calculate several averages of numerical variables based on all possible combinations of character variables (whether some of characer variables are missing or not).

 Brand  Char1 Char2 Char3 Char4 NumVar1 NumVar2 NumVar3
    A   a   xx  3   a   0.471   0.304   0.267
    A   b   xy  3   s   0.086   0.702   0.872
    A   c   xz  3   a   0.751   0.962   0.080
    A   d   xx  2   s   0.711   0.229   0.474
    A   a   xy  3   a   0.160   0.543   0.256
    A   b   xz  1   s   0.200   0.633   0.241
    A   c   xx  3   a   0.765   0.511   0.045
    A   d   xy  4   s   0.397   0.815   0.950
    A   a   xz  1   a   0.890   0.757   0.483
    A   b   xx  3   a   0.575   0.625   0.341
    A   c   xy  3   a   0.595   0.047   0.584
    A   d   xz  1   s   0.473   0.806   0.329
    A   a   xx  2   s   0.062   0.161   0.018
    A   b   xy  2   s   0.935   0.990   0.072
    A   c   xz  4   s   0.564   0.490   0.112
    A   d   xx  2   a   0.251   0.228   0.215
    A   a   xy  4   a   0.551   0.778   0.605
    A   b   xz  1   s   0.887   0.392   0.866
    A   c   xx  1   s   0.238   0.569   0.245
    A   d   xz  1   a   0.736   0.961   0.627

Thus, I want to compute the following (written not in the sas notations, but just logically):

%let numeric_var = NumVar1 NumVar2 NumVar3; *macro of all numerical variables;

*compute mean values for each NumVar by all combinations of Char.variables;

compute mean(&numeric_var) by Char1 Char2 Char3 Char4 
compute mean(&numeric_var) by Char1 Char2 Char3 
compute mean(&numeric_var) by Char1 Char2 
compute mean(&numeric_var) by Char1 
compute mean(&numeric_var) by Char1 Char2       Char4
compute mean(&numeric_var) by Char1             Char4
compute mean(&numeric_var) by Char1       Char3 Char4  
etc.

Is there any more efficient way in sas to compute all these averages than just type all these combinations by hand?

In principle, at the end I would like to merge two datasets: one dataset as given above; and another dataset with only Character Variables (Brand Char1 Char2 Char3 Char4) and missing values for some of them. That is why I want to calculate averages of numerical variables over all possible combnations of character variables

Many thanks in advance for any ideas.

Best, Vlada

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There's nothing wrong with crossposting the same question on multiple forums, but you might note that you did so that if you get a better answer in one place, searchers finding them on the other forum are able to find the solution. – Joe May 27 '13 at 15:21
up vote 3 down vote accepted

You will want to do some reading about PROC MEANS, one of my favorite SAS procedures. For example, consider this:

data have;
   input Brand $ Char1 $ Char2 $ Char3 $ Char4 $
         NumVar1 NumVar2 NumVar3;
   datalines;
    A   a   xx  3   a   0.471   0.304   0.267
    A   b   xy  3   s   0.086   0.702   0.872
    A   c   xz  3   a   0.751   0.962   0.080
    A   d   xx  2   s   0.711   0.229   0.474
    A   a   xy  3   a   0.160   0.543   0.256
    A   b   xz  1   s   0.200   0.633   0.241
    A   c   xx  3   a   0.765   0.511   0.045
    A   d   xy  4   s   0.397   0.815   0.950
    A   a   xz  1   a   0.890   0.757   0.483
    A   b   xx  3   a   0.575   0.625   0.341
    A   c   xy  3   a   0.595   0.047   0.584
    A   d   xz  1   s   0.473   0.806   0.329
    A   a   xx  2   s   0.062   0.161   0.018
    A   b   xy  2   s   0.935   0.990   0.072
    A   c   xz  4   s   0.564   0.490   0.112
    A   d   xx  2   a   0.251   0.228   0.215
    A   a   xy  4   a   0.551   0.778   0.605
    A   b   xz  1   s   0.887   0.392   0.866
    A   c   xx  1   s   0.238   0.569   0.245
    A   d   xz  1   a   0.736   0.961   0.627
run;

proc means noprint data=have completetypes;
   class Char1 Char2 Char3 Char4;
   var NumVar1 NumVar2 NumVar3;
   output out=want mean=mNumVar1 mNumVar2 mNumVar3;
run;

As written, the procedure will create an output data set named "want" with one observation for every combination of the variables listed in the "class" statement and with the MEAN statistic for each variable listed in the "var" statement. In this example, there will be 300 observations (which you will note is larger than the original data set).

Additionally, the output data set will contain two automatic variables:

  • _FREQ_ - The number of observations in the combination
  • _TYPE_ - An identifier for the specific combination (based on the CLASS variables)

The _TYPE_ variable will be especially useful in your case. It's a numeric value based on the number of variables listed in the class statement. Because you have four class variables, _TYPE_ will have 16 values ranging from 0 to 15. For example, the twelve observations that account for the combinations of variables Char1 and Char2 will have _TYPE_=12.

Here is a link to the Online Docs for PROC MEANS in SAS version 9.3.

share|improve this answer
    
As Joe mentions below you should probably use missing to capture any combinations with missing variables. – Robert Penridge May 28 '13 at 23:37

PROC MEANS should accomplish what you need, assuming I understand your problem.

proc means data=have;
class char1 char2 char3 char4;
types char1*char2*char3*char4 
      char1*char2*char3 
      char2*char3*char4 ... etc... ; *or use the various WAYS statements to get all combinations of a particular number of variables, or use _ALL_ to get all combinations;
var num1 num2 num3;
output out=want mean=;
run;

If the character variables might have missing values, then you need to use /missing; on the CLASS statement.

(Largely crossposted from SAS-L)

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