Mark,
There are many factors can affect response we want to control. We want to identify which are the main contributors. Through engineering experience, we were able to narrow it down to eight factors. The purpose of the DOE is to further narrow it down and get practical direction on how to improve the response. For this purpose, I think DSD does an excellent job.
I have tried two things:
1) Within the DSD platform, I removed a few not as significant terms and trimmed the model from 5 MEs, 4 quadratics and 1 interaction down to 4 MEs, 1 quadratic and 1 interaction. I was able to get more desirable confirmation results.
2) I simply add 4 of the 5 confirmation runs to the original DSD table, and use JMP Analyze: Fit Model : Standard Least Square to the same set up as 1) (4 MEs, 1 quadratic and 1 interaction). I was also able to get more desirable confirmation results with the remaining confirmation run data.
Question: Can I say screening effective factors and generating predictive model are two things, i.e., the later may be due to other reasons such as not having enough data (runs) to fit the model, however, the screening results are still sound and applicable?
Your point about space-filling design is very interesting. I will look into it and circle back in a few days.
Thanks and Happy Holidays!