I am wondering if the MLwiN can support using plausible values as dependent variable in multilevel analysis?
In international large-scale assessment data (e.g., TIMSS, PIRLS, PISA), scores in mathematics for example are calculated (scaled) by using jackknifing design 'JK2, JRR, etc.' and therefore when calculating a student's performance (achievement) the programme should consider all plausible values in the analysis. For example, in TIMSS 5 plausible values are used and therefore calculating students' achievement in a subject (i.e., Mathematics) a programme need to consider the 5 plausible values in calculating the means and its standard error. The question is: Does MLwiN consider this or has an option to select all scores? For example, some multilevel programmes like HLM have this optional and a user can select to calculate the statistics using one or 5 plausible values. I assume the MLwiN have the same, but honestly still did not find that. Anyone can provide a help on this? Thanks a lot!
Using plausible values
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Re: Using plausible values
MLwiN does not currently have direct support for this, however you may be able to trick it by storing your different plausible values in the format output by the Realcom-Impute software, and then using the Model->Imputation Menus. This would then fit the current model for each of the datasets and use Reuben's Rules to combine the results, which I believe would be the same as what you are after.
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Re: Using plausible values
The Realcom-Impute software would help you with the problem. 
