Simulation-based sequential Bayesian design |
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Authors: | Peter Mü ller,Don A. Berry,Andy P. Grieve,Michael Smith,Michael Krams |
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Affiliation: | 1. Department of Biostatistics, University of Texas M.D. Anderson Cancer Center, 1515 Holcombe Boulevard, Box 447, Houston, TX 77030 4009, USA;2. Department of Public Health Sciences, King''s College, London, UK;3. Pfizer Clinical Statistics, Sandwich, UK;4. Wyeth Research, Collegeville, PA, USA |
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Abstract: | ![]() We consider simulation-based methods for exploration and maximization of expected utility in sequential decision problems. We consider problems which require backward induction with analytically intractable expected utility integrals at each stage. We propose to use forward simulation to approximate the integral expressions, and a reduction of the allowable action space to avoid problems related to an increasing number of possible trajectories in the backward induction. The artificially reduced action space allows strategies to depend on the full history of earlier observations and decisions only indirectly through a low dimensional summary statistic. The proposed rule provides a finite-dimensional approximation to the unrestricted infinite-dimensional optimal decision rule. We illustrate the proposed approach with an application to an optimal stopping problem in a clinical trial. |
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Keywords: | 62C10 62K05 62L05 62L15 |
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