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Approximation Algorithms for Optimal Decision Trees and Adaptive TSP Problems

机译:最佳决策树和自适应TSP问题的近似算法

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摘要

We consider the problem of constructing optimal decision trees: given a collection of tests that can disambiguate between a set of m possible diseases, each test having a cost, and the a priori likelihood of any particular disease, what is a good adaptive strategy to perform these tests to minimize the expected cost to identify the disease? This problem has been studied in several works, with O(log m)-approximations known in the special cases when either costs or probabilities are uniform. In this paper, we settle the approximability of the general problem by giving a tight O(log m)-approximation algorithm.
机译:我们认为构建最佳决策树的问题:给出了可以消除一组M个可能疾病之间的测试,每个测试都具有成本,以及任何特定疾病的先验可能性,是什么是良好的自适应策略 这些测试以最小化预期的成本来鉴定疾病? 已经在几种作品中研究了这个问题,其中O(log m) - 在特殊情况下已知的uprymationation,当任一成本或概率都是均匀的。 在本文中,我们通过提供紧密的o(log m) - 估计算法来解决一般问题的近似性。

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