Dear Michiel,
Here is my labelled experiment: three labelled alternatives and an opt-out option. The three alternatives, optA, optB, and optC, represent different new methods. A forced choice question will be displayed if respondents select the opt-out option. I dummy coded all attributes and set all priors to zero in the pilot study. I obtain estimated priors from the pilot study but I have some questions when designing the Ngene main study design:
1. When calculating relative importance of each attributes, I exclude the alternative specific constant (ASC) value in the calculation. Is this correct?
2. For dummy coded attributes, TIME [0,1,2,3] has three dummy coded coefficients ([-0.417|-0.129|-0.234]) in optA, the value of zero in this base level is also included in the relative importance calculation. That is, the utility contribution calculation considers the value of 0, -0.417, -0.129, -0.234, and thus the TIME makes a maximum difference of 0.417 in utility. Is this correct?
3. I calculate the relative importance of each attribute separately for optA, optB, and optC. Is this approach correct, or should the attributes across all three alternatives (optA, optB, and optC) be combined to calculate a unified measure of relative importance?
4. I set 10 Bayesian priors and the remaining parameters use local priors. The syntax is ;eff = 2*unforced(mnl,d,mean) + forced(mnl,d,mean). Is it correct to use “mean” here? Besides, only 24 forced-choice observations are included out of a total of 474 observations from 50 respondents. Given this, is the weight of “2” for the unforced choice reasonable?
5. In the Ngene syntax below, the unforced choice model does not include scenario variables in the utility function for the “none” alternative. In the forced choice model, scenario variables are also not included in the utility function for the “optC” alternative. However, during the model estimation phase, I include scenario variables in the utility functions of optA, optB, and optC. Is this setting correct?
6. Since optA, optB, and optC represent new methods, I am uncertain whether the attribute parameters should have positive or negative signs. For attributes with unexpected signs, how can I determine whether these reflect true preferences or are due to model design error?
7. S estimate is 113735.262468 here. But my budget can only afford 550 respondents. How can I deal with this sample size issue?
8. The Bayesian mean D-error is 0.87 for the unforced model and 0.81 for the forced model. Are these values acceptable? I have currently set 10 Bayesian priors. Should I increase the number of Bayesian priors to better account for parameter uncertainty?
9. For Ngene unforced and forced choice model, prior parameters of all attributes are the same in both models. Is this correct?
Thank you in advance for your time and guidance.
Best regards,
Olivia