Dear All,
I have already conducted a first batch of surveys (50) using a design. The first design was made with a mnl in mind ( using ;eff = (mnl,wtp(ref1),mean) ;wtp = ref1(y,d,e,c/pay)) as my objective is to calculate wtp for some attributes.
After runing a mnl model with these initial data gives some results, but when I am doing a Hausman-McFadden test for IIA, I have to reject the hypothesis of independence, indicating the need of something more complex. Random parameter model is improving over standard mnl and show some significant SD on some (but not all parameters).
I want to make use of these information but with a dilemma, either I can:
1. Use all the information and make a design for a rp model and entering prior information on means and sd of priors (but cannot use (mnl,wtp(ref1),mean) ;wtp = ref1(y,d,e,c/pay)) (apparently not yet available on my version of ngene), so I would use all the information on priors but would use eff=rp, d, ...
2. Use less information about my priors (limit myself to bayesian setting) and keep the efficiency based on the wtp measurement.
As experienced users, what would you advise?
Thank you in advance for your comments and ideas on the subject.
Best
Damien