A predictive approach for the selection of a fixed number of good treatments |
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Authors: | K. Lam P.L.H. Yu |
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Affiliation: | Department of Statistics , University of Hong Kong , Hong Kong |
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Abstract: | This paper offers a predictive approach for the selection of a fixed number (= t) of treatments from k treatments with the goal of controlling for predictive losses. For the ith treatment, independent observations X ij (j = 1,2,…,n) can be observed where X ij ’s are normally distributed N(θ i ; σ 2). The ranked values of θ i ’s and X i ’s are θ (1) ≤ … ≤ θ (k) and X [1] ≤ … ≤ X [k] and the selected subset S = {[k], [k? 1], … , [k ? t+1]} will be considered. This paper distinguishes between two types of loss functions. A type I loss function associated with a selected subset S is the loss in utility from the selector’s view point and is a function of θ i with i ? S. A type II loss function associated with S measures the unfairness in the selection from candidates’ viewpoint and is a function of θ i with i ? S. This paper shows that under mild assumptions on the loss functions S is optimal and provides the necessary formulae for choosing n so that the two types of loss can be controlled individually or simultaneously with a high probability. Predictive bounds for the losses are provided, Numerical examples support the usefulness of the predictive approach over the design of experiment approach. |
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Keywords: | ranking and selection predictive approach correct selection predictive bounds simultaneous control |
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