Hello,
I have screened a series of biological parameters on a biological response with a DSD. I am doing a forward stepwise regression AICc, and at p value below 0.05, I see only one or maximum two of my parameters become significant, but beyond that (like at around 0.1 or 0.2), several others pop out as significant, and if I remove them, the R square value decreases. In some models I do not see either Cp or R square values, which are mainly the last models the software shows after fitting. So my questions are: 1- Is it correct to exclude those models without Cp and R squared values? 2-The literature lacks enough information about the relationship between parameters for my response, but there might be some that I would like to understand with model. I have checked for multicollinearity, and the VIF value is around 1 to 2 (not high) but I am not clear how I can interpret my results, and whether I should confine my model to p value below 0.05 or above that?
As a beginner, I'd appreciate any help!