Abstract
It is standard practice by researchers and the default option in many statistical programs to base test statistics for mixed models on simulations using asymmetric draws (e.g. Halton draws). This paper shows that when the estimated likelihood functions depend on standard deviations of mixed parameters this practice is very likely to cause misleading test results for the number of draws usually used today. The paper shows that increasing the number of draws is a very inefficient solution strategy requiring very large numbers of draws to ensure against misleading test statistics. The paper shows that using one dimensionally antithetic draws does not solve the problem but that the problem can be solved completely by using fully antithetic draws. The paper also shows that even when fully antithetic draws are used, models testing away mixing dimensions must replicate the relevant dimensions of the quasirandom
draws in the simulation of the restricted likelihood. Again this is not standard in
research or statistical programs. The paper therefore recommends using fully antithetic draws replicating the relevant dimensions of the quasi-random draws in the simulation of the restricted likelihood and that this should become the default option in statistical programs.
draws in the simulation of the restricted likelihood. Again this is not standard in
research or statistical programs. The paper therefore recommends using fully antithetic draws replicating the relevant dimensions of the quasi-random draws in the simulation of the restricted likelihood and that this should become the default option in statistical programs.
Original language | English |
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Place of Publication | Frederiksberg |
Publisher | Department of Food and Resource Economics, University of Copenhagen |
Pages | 1-27 |
Number of pages | 27 |
Publication status | Published - 2013 |
Series | IFRO Working Paper |
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Number | 2013/1 |