How do design levels impact estimates of marginal trade offs
Posted: Wed Jul 15, 2020 12:31 am
Hi all,
I am working with two sets of data, both samples of the same population. For each sample, I conducted a choice experiment with a cost attribute roughly centered around $5. In one (sample 1), the spread of the attribute was slightly lower, and the design was such that people made comparisons between $3 and $4, $1 and $2, but never the lowest and highest values. In the other (sample 2), the spread of the attribute was slightly larger, and the design was such that people made comparisons between the lowest and highest values frequently, e.g. $1 and $10.
Marginal WTP for the two samples is much larger in the sample where respondents were asked to make comparisons between very low and very high values.
Is there a mathematical explanation for this? I'm assuming what is going on is that people in sample 2 picked options with high costs and a higher rate than we would have extrapolated using the results from sample 1. Both designs were d-efficient designs created in NGene for MNL models.
Is there a term or explanation for this in the experimental design literature -- framing effect, attribute non-attendance, something else?
Thanks so much!
I am working with two sets of data, both samples of the same population. For each sample, I conducted a choice experiment with a cost attribute roughly centered around $5. In one (sample 1), the spread of the attribute was slightly lower, and the design was such that people made comparisons between $3 and $4, $1 and $2, but never the lowest and highest values. In the other (sample 2), the spread of the attribute was slightly larger, and the design was such that people made comparisons between the lowest and highest values frequently, e.g. $1 and $10.
Marginal WTP for the two samples is much larger in the sample where respondents were asked to make comparisons between very low and very high values.
Is there a mathematical explanation for this? I'm assuming what is going on is that people in sample 2 picked options with high costs and a higher rate than we would have extrapolated using the results from sample 1. Both designs were d-efficient designs created in NGene for MNL models.
Is there a term or explanation for this in the experimental design literature -- framing effect, attribute non-attendance, something else?
Thanks so much!