Hi JMP Community,
I have two questions regarding the analysis of the Design of Experiments I performed:
1) When performing a screening DOE (Plackett-Burman design) and one of the model terms has a positive effect on the dependant variable but it does not appear to reach statistical significance, does it make sense to still include this factor when performing the second, optimization DOE? When a factor does not have a statistically significant effect on the outcome in a screening DOE, it does not necessarily mean that the effect of this factor on the outcome is negligible I would think. Is this correct?
2) When analyzing a DOE and reducing the model by removing non-significant terms, I observe that the lack-of-fit test becomes non-significant after reducing the model while it was significant before reducing the model. How should I interpret this? Does it mean that by removing these terms, the pure error of the model increases, which subsequently decreases the lack-of-fit?
Thank you,
Sara