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I am looking to standardize values of variable V2 along variable V1. I would like to replace all missing with any non-missing value within group V1. The non-missing values are standardized, and might occur more than once within a group.

Have:

V1    V2
----------
 1    100
 1    -
 1    -    
 1    -
 1    -
 1    -
 1    100
 2    -
 2    -
 2    200
 3    -
 3    300
 3    300
 3    -
 3    -
 3    -

Want:

V1    V2
----------
 1    100
 1    100
 1    100    
 1    100
 1    100
 1    100
 1    100
 2    200
 2    200
 2    200
 3    300
 3    300
 3    300
 3    300
 3    300
 3    300

I used:

Proc stdize data=have out=want missing=mean reponly;
By V1;
Var V2;
Run;

Though this fails to fill in all missing values by the mean of the non-missing values. Many missing values remain.

Within most groups there are more missing values than there are non-missing values. I expect this might make standardization by mean impossible.

How can I achieve the desired result when the majority of values within a group are missing, but the non-misisng values are still standardized?

marked as duplicate by user667489, Community Jan 12 at 15:40

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  • 1
    Did you read the SAS log? Did you get a message like this? WARNING: The scale estimator for variable V2 is less than or equal to 0. Variable V2 will not be standardized and a missing value is assigned to its scale estimator. NOTE: The above message was for the following BY group: V1=1 – data _null_ Jan 11 at 19:01
  • I was prompted that exact message in the log. – user10712739 Jan 11 at 19:18
  • Your example data shows the v2 values being the same across all records for each group. Does that reflect your actual data structure? – Reeza Jan 12 at 1:11
  • Yes. It's the same value across each group. – user10712739 Jan 12 at 1:20
  • Did you mean to say you want to impute missing values such that each group has a "user10712739" distribution ? – Richard Jan 12 at 12:46
1

I would do this using a double DOW-loop approach:

data want;
  do _n_ = 1 by 1 until(last.v1);
    set have;
    by v1;
    if not(missing(v2)) and missing(fill_value) then fill_value = v2;
  end;
  do _n_ = 1 to _n_;
    set have;
    if missing(v2) then v2 = fill_value;
  end;
  drop fill_value;
run;

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