Hello,
Last week I posted a question on the NGENE part of this forum and Michiel gave me a quick and thorough answer. I have a follow-up question, but I thought it might be wise to post it on this part of the forum because it concerns choice designs instead of the NGENE software.
I have an unlabeled choice experiment about environmental benefits with a status quo and two different environmental project options. I have a big constraint that the levels of the environmental attributes in the status quo cannot dominate the environmental project options for the sake of plausibility.
Michiel suggested that I use a Modified Federov algorithm because I have a large design, but he mentioned that this algorithm relaxes the attribute level balance criteria. My question is: how necessary is it to have attribute level balance in a choice design? Most of the literature I have found says that attribute level balance is desirable because it ensure many observations for each attribute level, but I can't seem to find anything that examines whether it is absolutely necessary to have reliable parameter estimates.
I generated a design with the Modified Federov algorithm and noticed a pattern that the middle attribute levels seemed to be the ones under represented in the design as opposed to the more extreme upper and lower values. I would think that the upper and lower values might be more important to look at than the middle values anyway so I'm not sure if there is a problem or not.
Any advice would be greatly appreciated!
Thanks,
Pat