by Dash76 » Tue Oct 24, 2023 10:12 am
Dear Professor,
I'm using Ngene to design a best-worst scaling case 2 experiment and am employing the workaround you suggested (which works very effectively - thank you). My goal is to elicit weights for 10 attributes: half with four levels, and the other half with five levels. My primary objective is precise parameter estimation, while my secondary goal is exploring and evaluating heterogeneity.
I intend to produce a design of approximately 400 profiles divided into 20 blocks, each containing 20 profiles, for a sample size of 1,200 respondents. While Ngene ensures overall level balance and near-zero between-attribute correlations for the total design, I'm encountering some issues at the block level:
1. Within-Block Level Balance: Ngene creates designs with excellent overall level balance. However, there's an imbalance within each block. Does Ngene aim to achieve as much 'within block level balance' as possible, or does it just try to achieve this across the entire survey? I selected 20-task blocks believing this would aid in maximising ‘within block level balance’ given the attribute levels, but I'm reconsidering if this doesn't assist with that goal (as 20 tasks is a lot for one person to complete).
2. Between-Attribute Correlations: Similarly, despite Ngene achieving near-zero correlations across the design, individual blocks exhibit larger correlations, sometimes beyond the [-0.5 to 0.5] range. Does Ngene try to minimize these correlations within blocks?
In relation to points 2 and 3 above, is there a strategy to enhance within-block level balance and reduce attribute correlations? For instance, would a 200 choice set survey, folded over to create 400 choice sets, be beneficial?
Finally I wonder if I could ask about avoiding 'Easy Choices' please. I aim to exclude profiles with either: a) a top-level attribute without any other top or second-top attribute, or b) the lowest level attribute without any other lowest or second-lowest attribute. Is it realistsic for me to expect to find such a design? And would the most effective approach simply be to extensively run Ngene and then sift through generated designs until I find one devoid of such choices?
Thank you for your guidance on these matters.