Dear Michiel,
I run a pilot study using the following attributes and levels:
-yol (years of life), three levels (0.5, 1, 3)
-qol (quality of life), three levels (20, 40, 60)
-exp (patient experience), three levels (0.poor, 1.fair, 2.good)
-size (size population), three levels (50, 5000, 10000)
-equ (equity), three levels (25,50,75)
-cost, three levels(20,40,60)
In the pilot study, I ran two separate D-efficient designs, as I am interested in how preferences change when ‘cost’ is not one of the attributes. In each design, I used priors close to zero, and used a partial profile design to have (in all choice sets) overlap in two attributes:
- Design 1: we treated all six attributes as numerical, except for “exp” which was treated as categorical
- Design 2: we included the first 5 attributes from the list (i.e. we did not include “cost”), and treated “yol”, “qol” and “exp” as categorical. “size” and “equ” were treated as numerical. I did this to make sure we have some choice sets with overlap in “exp” (I followed here your advice discussed in the Ngene forum ‘Candidate set & overlapping’)
I now have the pilot data collected and was wondering whether it would be okay to use this data, estimate the MNL (separately for Design 1 and Design 2) with all attributes as categorical, and then use the parameter estimates and the s.e. as priors into the Bayesian D-efficient design and treat all as categorical in Ngene?
I have heard some scholars arguing that when doing the design optimisation we should treat all attributes as categorical, and separate the experimental design stage from the estimation one. I wonder what would be your take on this?
In addition: Although it might be a bit late, I am now considering adding some interactions between attributes. If I am adding that into the Bayesian D-efficient design, to obtain the design for the actual study, should I assume priors close to zero? And what happens if I do not know the direction of the interaction terms?
Many thanks!
Best wishes,
Pamela.