Is it possible to set up multinomial logistic regression with multiple ordinal predictors?

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I am trying to generate a regression model that takes in 9 ordinal inputs(X) and returns 1 ordinal output (Y).
If I treat my X matrix of predictors like they are continuous (all ranging in integer values from 0 to 3, some only from 0 to 2), the model has relatively large coefficients (e.g. -1.68e15), or it just errors out with the following output:
Index exceeds matrix dimensions.
Error in mnrfit>ordinalFit (line 380)
pi = [gam(:,1) diffgam 1-gam(:,k-1)];
Error in mnrfit (line 206)
ordinalFit(x,z,m,pi,flink,ilink,dlink,n,k,p,pstar,parallel);
Error in GroomingOntomFLS_multiNomOrdRegress (line 51)
val = mnrfit( dataMatrix, responseVec, 'model', 'ordinal');
Each column of my `dataMatrix` variable is a separate, ordinal predictor. Is it possible to define them explicitly as ordinal variables?

Respuestas (1)

Corey Silva
Corey Silva el 24 de Oct. de 2017
This definitely should be possible but hard without seeing your inputs. I think the following example should help you out: https://www.mathworks.com/help/stats/mnrfit.html#btpyj65

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