I'd like to simulate a dataset based on existing data using the
SIMPLAN CREATE command in SPSS (v24). From what I can tell, existing correlations between continuous variables are automatically simulated, and relationships between categorical variables can be simulated when including the
/CONTINGENCY MULTIWAY = YES sub-command. However, I've not been able to (easily) simulate relationships between categorical and continuous variables, say, between gender and height.
I tried cheating by computing copies of the categorical variables and setting them to scale variables in the original data before simulating:
COMPUTE CatScale1 = Cat1. COMPUTE CatScale2 = Cat2. EXECUTE. VARIABLE LEVEL CatScale1 CatScale2 (SCALE).
Then plugged them into
SIMPLAN like so:
SIMPLAN CREATE /SIMINPUT INPUT = Scale1, Scale2, Cat1, Cat2 , CatScale1(FORMAT=F,0), CatScale2(FORMAT=F,0) /CONTINGENCY MULTIWAY = YES /PLAN FILE = 'test.splan'. SIMRUN ...
This automatically preserves the relationship between the two scale variables, and the relationship between the categorical variables is preserved as requested.
I then change the converted variables back to categorical in the simulated dataset:
COMPUTE CatScale1 = RND(CatScale1). COMPUTE CatScale2 = RND(CatScale2). EXECUTE. VARIABLE LEVEL CatScale1 CatScale2 (NOMINAL).
Running the following gives reasonably similar results, showing that the relationship is maintained between the scale variable and the back-converted categorical variable:
DATASET ACTIVATE original. MEANS TABLES = Scale1 by Cat1 /CELLS = MEAN COUNT STDDEV. DATASET ACTIVATE synth. MEANS TABLES = Scale1 by CatScale1 /CELLS = MEAN COUNT STDDEV.
However, swapping in
Cat1 on the
MEANS command for the
synth data demonstrates no differences between groups; the relationship doesn't hold up.
Checking on the relationships between the categorical variables:
DATASET ACTIVATE original. CROSSTABS /TABLES = Cat1 by Cat2 /CELLS = COUNT. DATASET ACTIVATE synth. * This is pretty close to the above, as expected. CROSSTABS /TABLES = Cat1 by Cat2 /CELLS = COUNT. * Some of the cells were close, some were way off. CROSSTABS /TABLES = Cat1 by CatScale2 /CELLS = COUNT. * Everything was waaayyy off. CROSSTABS /TABLES = CatScale1 by CatScale2 /CELLS = COUNT.
So it looks like the trick works for back-converting a categorical variable (with 2 levels, anyway) and its relationship to a scale variable, but back-converting won't maintain the relationships between the categorical variables (at least if one has 2 levels and the other has 4), which is about what I expected. The whole thing feels kludgey and is probably dangerous in a variety of circumstances. For the life of me, I can't find a better way. I'd rather not go the model input route, as I don't want to push the simulation toward a prediction in the event users have other predictions they'd like to test.
Have I missed something?