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3rd power parameter DOE
Hi JMP ers,
I have 4 factors and try to make a model with main effects, interactions, 2nd order and 3rd order power.
I make design with recomended optimality criteria. When i checked color map correlations i can always see x1 and x1*x1*x1 correlation near to 1. How can make a DOE that does not have this problem?
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Re: 3rd power parameter DOE
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Re: 3rd power parameter DOE
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Re: 3rd power parameter DOE
AFAIK, in the custom design platform, as long as you select Necessary (vs. If Possible), JMP will create a design that will allow for estimation of those effects.
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Re: 3rd power parameter DOE
I do not mean to contradict one of my colleagues, but how does one specify the factors, model, and number of runs in order to get 'correct design' without correlated estimates?
I added four continuous factors representing concentration, temperature, time, and pressure. I added terms for the second and third power of each factor to the linear model. I used the default number of runs. This example is clearly not one of the correct results:
I simulated the response so that I could launch Fit Least Squares platform. The response is not involved in the correlation of the estimates, which is also indicated by VIF > 1 in the parameter estimates report. Here is the design:
Here is the report using the default coded levels. VIF around 10 indicates a correlation around 0.9.
Here is the same analysis but without coded levels. The coding clearly helps:
What is the use of the map of correlations if it does not represent the actual correlations? (I think that it does.)
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Re: 3rd power parameter DOE
In the future, I can see us using an orthogonal polynomial coding approach to make to make the higher order terms not look as bad as this. Note that you'll see the same issue between x^2 and x^4 if you were to include up to the fourth power.
To summarize, it's not that there's anything wrong with the design, or the correlations, but it's something that we're certainly aware of causing confusion and hope to better address this in a future version.
Hope this helps,
Ryan
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Re: 3rd power parameter DOE
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Re: 3rd power parameter DOE
@statman , just making sure we're all on the same page.
It was great talking to you yesterday, and it was great to put a face with the name. Very much appreciate your help on the community forums.
Cheers,
Ryan
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Re: 3rd power parameter DOE
Is custom Design with I optimality correct? Or do you suggest me something else?
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