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Efficient design, pooled data, evaluation of split designs

PostPosted: Tue Nov 17, 2009 9:37 am
by alex.mitrani
Hello,

I am using Ngene to design choice experiments for a transport application. I have two groups of public transport alternatives and within each group "first class" and "standard class" alternatives, which share some attributes but have others that differ. I have set this up within each group as per 8.5 ("Designs within designs") in the manual. I also have had to take into account trip length, and have ended up with 5 separate designs for different trip length bands. I was interested in using Ngene's "pivot designs" functionality for this, but given my 4 alternatives it would only let me implement the "designs within designs" or the "pivot designs", but not both.

My question arises from the fact that I want to pool all the data together at the analysis stage, and am feeling slightly uneasy about this. I used the same priors for each of the 5 distance bands, so I think it should work, but it would be nice if there was a way of testing this or taking into account that it is going to be used like this, in advance. Is there? From my reading of the manual the "model averaging" functionality in Ngene lets the user test out different model specs with one experimental design, but not the other way round: in this case what interests me is using 5 different experimental designs with one underlying model to be estimated.

That brings me onto my second question. I was wondering if the "eval" feature could be used to evaluate the full blocked design with the 5 distance band-related designs, as a way of checking that the full SP experiment makes sense. The manual does not go into much detail of how to do this. Can you specify priors when you use "eval"? If I specify "block" in the last column, will Ngene take this into account when it evaluates the design?

Any help or advice would be very much appreciated.

Best regards

Alex Mitrani

Re: Efficient design, pooled data, evaluation of split designs

PostPosted: Sat Nov 28, 2009 12:53 pm
by johnr
Hi Alex

You might be able to do what you want to do via the covariates command. This allows different designs to be generated (evaluated) for different covariate classes. In your case, it might be possible to treat each of the distance classes as the covariates.

The point to note is that if you have used the same priors for each class, then the Fisher Information matrices can simply be summed over the classes to form the 'joint Fisher matrix'. If you want to collect different numbers of respondents per segment, you can wieght the individual Fisher matrices in generating the combined or joint Fisher matrix. This is what the covariates section of the program does internally.

John

Re: Efficient design, pooled data, evaluation of split designs

PostPosted: Tue Jan 26, 2010 3:42 am
by alex.mitrani
Hi John

Thanks very much for your reply. I will bear in mind the covariates command the next time I use Ngene.

Best regards

Alex