Hi,
I am trying to model the results of the designed experiment where 30 parts were produced. The measured characteristics are various dimensions of the parts.
However, 10 among those parts have a clearly visible defect, so some dimensions for those defective parts are clearly wrong. It is possible that other dimensions are also affected.
There are 3 (4) possible ways that come to my mind how to do the modeling:
1) Remove the defective parts from the analysis (this is tricky since there are 10 of them).
1a) Remove only the dimensions that are clearly wrong, while assuming other dimensions are not affected.
2) Add another response to the model which describes the quality (1 for good, 0 for defective). Then target only those that have quality = 1
3) Add a blocking factor with random effect, and separate parts in 2 groups
What do you suggest? Do you think of any better way how to do this?
Thanks!