Dear Michiel
I do have more of an Nlogit question than an Ngene one, however, it’s based on the efficient design I have been working with.
Since our last correspondences, I have been undertaking a household questionnaire survey with a goal to understand the probability of the general public to use an improved Bus service (potentially a BRT) along my study corridor. a brief details are as follows:
A) I had to design 3 sets of surveys (I am calling those MA, MB and MC) including questions designed for people living in different locations. Samples obtained so far are: MA= 23, MB =12 and, MC =43, based on the sample size generated by NGene.
B) The scenario questions were produced separately by NGene and by the use of separate Syntax and priors (similar though), However, the following were the same:
• There are 2 alternatives – (1) Private Cars and (2) Improved Bus
• The attributes are same: (1) Travel time, (2) Peak Service Frequency (headway), (3) Access and Egress Walking time and, (4) Transfer wait and delay.
C) The attribute levels were different – firstly, because of the consideration of different locations, and secondly, the Attribute 4 (transfer wait and delay) was only applicable for the residents of the farther suburbs and who are at least 500m away from the study corridor.
I have not added my syntax to keep this message brief, please let me know if you would like to see those.
Based on the above, I would like to seek your advice on following Questions please:
Q1. Can I combine all three datasets in one spreadsheet for analysis?
Q2. If not, is there any other mechanism to get a combined outcome?
Q3. Also, I have used 18 questionnaires as pilot before I came to the final design of one of the above surveys as i mentioned in my previous questions. Again, the attribute levels have only changed in the new design from the Pilot. As you have indicated in your earlier reply, could you please advise me on a mechanism on how I can include these pilot data to my current analysis?
Q4. My understanding of the Nested Logit Model so far is that it’s based on nesting similar type of alternatives together? is there any other mechanism to do the nesting?
I would be very grateful if you could please provide some advice on this matter. It would immensely help me moving forward with my dataset and the analysis.
Thank you in advance.
Yours sincerely
Munshi