Maximum-Likelihood Non-Decreasing Response Estimates

Abstract

Let xi,j, 1 i m, 1 j ni, be observations from a doubly-indexed sequence \Xi,j\ of independent random variables (all of them discrete, or all of them absolutely continuous). Suppose that each Xi,j has the PDF f(xθi) from a one-parameter family of PDFs f(x θ). Mild assumptions are described under which there is a unique, non-decreasing compound response estimate of θ=<θ1, θm> that maximizes the compound likelihood function among all non-decreasing response estimates. An efficient algorithm is described to compute this unique estimate. The same theory and algorithm also give the unique non-increasing compound response estimate that maximizes likelihood among all non-increasing response estimates. One simply reverses the order represented by the index i.

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