Hi Melinda!
Thanks for sharing this neat work around for the none option for versions of JMP older than 13!
I have used the files that you shared regarding the Pizza profiles and responses with the none option included, which is much appreciated.
However, now that I have had a play around with them I have come across a problem - for me at least and perhaps for others too.
If you change which indicator variables (attribute levels) are include when you run the model the value of both the utility and X2 change fairly dramatically.
So how do you interpret the value of "none"?
For example if you include "Mozzarella", "Pepperoni", and "Thick", the Utility value of none is -1.68 and X2 is 15.025, which is great and can be interpreted if this value doesn't change when you change attribute levels, however if you include a different combination of attribute levels lets say the inverse "Jack", "None" and "Thin" it takes on a completely different set of values for none Utility is now -3.29 and X2 is 76.703. Yet the AICc and BIC remain constant as does the -2*LL, and as expected the inverse values for the utility of each of the levels that were included compared to the first run.
Intuitively this seems wrong... as the first combination of levels of the alternative are much more favorable than the second yet the utility for none gets less for the less favored combination, yet the X2 increases, suggesting it is more weighted in the analysis?
I looked through the results a number of different ways and exported a data table from the profiler which I think highlights the problem (perhaps)...
The attribute parameters appear to being estimated twice once with none and once without? Shouldn't there only be 9 profile estimates, the 8 alternatives plus none/no choice (coded as 0 0 0 1)? If I am wrong could you please explain how I should interpret the none in your examples?
Thanks so much this is very helpful!!
Jasha