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Maximum Likelihood and Restricted Likelihood Solutions in Multiple-Method Studies
Authors:Andrew L Rukhin
Affiliation:National Institute of Standards and Technology, Gaithersburg, MD 20899-8980
Abstract:A formulation of the problem of combining data from several sources is discussed in terms of random effects models. The unknown measurement precision is assumed not to be the same for all methods. We investigate maximum likelihood solutions in this model. By representing the likelihood equations as simultaneous polynomial equations, the exact form of the Groebner basis for their stationary points is derived when there are two methods. A parametrization of these solutions which allows their comparison is suggested. A numerical method for solving likelihood equations is outlined, and an alternative to the maximum likelihood method, the restricted maximum likelihood, is studied. In the situation when methods variances are considered to be known an upper bound on the between-method variance is obtained. The relationship between likelihood equations and moment-type equations is also discussed.
Keywords:DerSimonian-Laird estimator  Groebner basis  heteroscedasticity  interlaboratory studies  iteration scheme  Mandel-Paule algorithm  meta-analysis  parametrized solutions  polynomial equations  random effects model
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