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ADouyon
Level III

Comparing DoEs- Why D/G/A/I- efficiencies are all the SAME and terribly LOW?

Hi,

I am working on Custom DoE (JMP16). I have 4 factors (1 continuous and 3 discrete num, with constraints). I have 1 response. I know these 4 factors are important and have interactions. My goal is to optimize the response to find the optimal factor levels that result in the highest efficiency possible. I included all quadratic and interaction effects.

I am using the I-optimality since this is not a screening design.
- The first design (v5) has no replicates. It has 18 runs total.
- The second design (v6) has duplicates. It has a total of 36 runs (I augmented it).
- The third design (v7) has triplicates. It has a total of 54 runs (I augmented it).

For this experiment that I plan to do, it is easier for me to add duplicates or triplicates (of the same conditions) once in the lab. That's why I don't mind if I have more runs, as long as these are of the same conditions (duplicates or triplicates), because I am able to run them all together as long as these are replicates of the same initial 18 runs. 
[If instead I was to simply use the "add replicate runs" feature, then JMP adds way too many more runs with too many different conditions for me to test (resources limitation). For example, when adding just 4 replicate runs, JMP generates a design with a default total of runs =27, which is too many different conditions to test...That's why I decided to replicate my entire design instead using the augment feature.]

- I am comparing designs v5, v6 and v7 (attached). However, my "Fraction of Design Space" plot is blank. Why is it blank? or is the data very small that I can't see it?
- The "Power Analysis" and "Power Plot" look pretty good for v6 and v7. But, I am interested in optimizing the response anyway (not in the main effects).
- However, the D/G/A/I- efficiencies are terribly POOR and all are the SAME. Are these all the same because design v6 is a duplicate of design v5, and design v7 is a triplicate of design v5? and why are these values so LOW (0.5 and 0.3)? Are my designs bad?

I tried to look this up but, all I found on the DOE guide is:
"Relative efficiency values that exceed 1 indicate that the reference design is preferable for the given measure. Values less than 1 indicate that the design being compared to the reference design is preferable. The 16-run design has lower efficiency than the other two designs across all metrics, indicating that the larger designs are preferable."
But, this didn't help me much.

Thank you in advance!!

22 REPLIES 22
Victor_G
Super User

Re: Comparing DoEs- Why D/G/A/I- efficiencies are all the SAME and terribly LOW?

Hi @ADouyon,

You're welcome ! I'm happy to read that you feel comfortable with this design and that you'll try it in the lab.
Please send some news about how it did, and if you have any problems or questions, the JMP Community is here !

Have a great weekend too @ADouyon !
Victor GUILLER

"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)

Re: Comparing DoEs- Why D/G/A/I- efficiencies are all the SAME and terribly LOW?

The prediction variance is helpful information when comparing two or more designs when prediction is the primary goal of this experiment—the lower the variance, the better the design.

 

Remember that there is no information about the variance of the response before the data is collected. This plot assumes that this variance is 1, which is unlikely. The plot also assumes the linear model and its assumptions, including constant variance throughout the response range. If you have an estimate of the response, then multiply the scale in this plot by your estimate to learn the actual prediction variance. The square root of this variance is the standard error of prediction.

ADouyon
Level III

Re: Comparing DoEs- Why D/G/A/I- efficiencies are all the SAME and terribly LOW?

Thank you @Mark_Bailey for the clarification!!