Hi,
I have some questions about how to analyse my screening experiment, I'm using JMP 10.
I have 5 factors at two levels. I made a screening design, a fractional factorial design with resolution IV, and added two center points. The two-factor interactions were confounding so I augmented the design to resolve them. My design is not orthogonal due to difficulties controlling some conditions during the experiment (e.g. the temperature could not be held to 20°C, it turned out to be 22°C). I would like to find out which parameters that seem to have an effect on the response, how large these effects are and, if I can, also if there is a sign of curvature in the model.
If I use the Screening Platform, some factors will be highlighted: main effects, some two-factor interactions but also two quadratic terms.
- What is the requirement for the factor to be highlighted?
When I hit "Make model" with these highlighted factors, the two quadratic terms are not significant (Prob>t is 0.08 and 0.17).
- How come they are highlighted by the Screening Platform, but not significant in this model?
- How should I interpret the result, (their estimates are -1.02 and 0.78)? That there seems to be a curvature (even if they are not significant)? But they are confounding, so I can't say which quadratic terms are giving the effect.
- Should I not include them in the model?
- The RSquare Adj is 0.88 for the first model, and 0.57 when I exclude the quadratic terms.
- Do I need to add axial terms to get significant quadratic terms?
Should I use another method, fit model or stepwise regression instead?
A lot of questions, I hope someone can help me sort out some of them. Thanks in advance!