ACM/IEEE SC 2000 Conference (SC'00) 2000
DOI: 10.1109/sc.2000.10026
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Scalable Algorithms for Adaptive Statistical Designs

Abstract: We present a scalable, high-performance solution to multidimensional recurrences that arise in adaptive statistical designs. Adaptive designs are an important class of learning algorithms for a stochastic environment, and we focus on the problem of optimally assigning patients to treatments in clinical trials. While adaptive designs have significant ethical and cost advantages, they are rarely utilized because of the complexity of optimizing and analyzing them. Computational challenges include massive memory r… Show more

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