Developer Tutorial: Using JMP Pro Generalized Regression to Analyze Designed Experiments
Published on 11-07-202403:30 PM by
clay_barker| Updated on 11-07-202405:40 PM
DOE allows multiple input factors to be manipulated, determining their effect on a desired output (response). By manipulating multiple inputs at the same time, DOE can identify important interactions that may be missed when experimenting with one factor at a time.
Generalized Regression used in conjunction with a designed experiment may provide answers to questions such as:
What are the key factors in a process? (Explanatory)
At what settings would the process deliver acceptable performance? (Predictive)
What are the key, main, and interaction effects in the process? (Explanatory)
Variable Selection is used to:
Fit a sequence of models (maybe many models)
Use some metric to see how well each model fits our data
Keep the model that fits best
In this video, see how to:
Compare different models
Decide on the sequence of models to fit
Apply technique to some examples
Q&A is included throughout the video.
Developer Tutorial - Using JMP Pro Generalized Regression to Analyze Designed Experiments
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