0

I am estimating a model for firm bankruptcy that involves 11 factors. I have data from 1900 to 2000 and my goal is to estimate my model using proc logistic for the period 1900-1950 and then test its performance on the 1951 through 2000 data. Proc logistic runs fine but the problem I have is that the estimated coefficients have the same name as my factors that I was using in my model. Suppose the dataset that contains all my observations is called myData and the dataset that contains the estimated coefficients which I obtain using an outtest statement (in proc logistic) is called factorEstimates. Now both of these data sets have the variables factor1, factor2, ..., factorN. Now I want to form the dataset outOfSampleResults that does something like the following:

data outOfSampleResults; set myData factorEstimates; newVar=factor1*factor1; run;

Where the first mention of factor1 refers to that contained in myData and the second refers to that contained in factorEstimates. How can I inform sas which dataset it should read for this variable that is common to both of the datasets in the set statement? Alternatively, how could I quickly rename factor1, factor2, ..., factorN as factor1Estimate, factor2Estimate, ..., factorNEstimate in the factorEstimates dataset so as to circumvent this common variable name issue altogether?

  • Are you aware that the code you've written will simply concatenate both datasets and then produce newVar as the square of factor1? Do you wish to merge/join the myData and factorEstimates datasets instead? – mjsqu Nov 29 '14 at 2:48
  • Read this page: support.sas.com/documentation/cdl/en/basess/58133/HTML/default/… and take note of the sections where the 'RENAME=' data set option is used. – mjsqu Nov 29 '14 at 2:50
  • No, I need a a way to quickly rename all the column names in the factorEstimates dataset. Perhaps proc SQL? – Phillip Champlin Nov 29 '14 at 3:41
  • If the variables are named factor1-factor12 then you can do a mass rename via: rename factor1-factor12=new_factor1-new_factor12; – Reeza Nov 29 '14 at 4:01
0

Two quick ways to get estimates for a model already developed: 1. Proc logistic score statement http://support.sas.com/documentation/cdl/en/statug/63033/HTML/default/viewer.htm#statug_logistic_sect066.htm

  1. Include the data in your original proc logistic but use a new variable and ensure that the dependent variable is missing for the observations you want to predict.

    data stacked; set all; if year >1950 then predicted=.; else predicted=y; run;

    proc logistic data=stacked; model predicted = factor1 - factor12; output out=out_predicted predicted=p; run;

  • OMG, the second solution you have provided is extremely useful to me. Thank you so much! – Phillip Champlin Nov 29 '14 at 4:49

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.