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Adaptive sensing resource allocation over multiple hypothesis tests

机译:多个假设检验的自适应感知资源分配

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This paper considers multiple binary hypothesis tests with adaptive allocation of sensing resources from a shared budget over a small number of stages. A Bayesian formulation is provided for the multistage allocation problem of minimizing the sum of Bayes risks, which is then recast as a dynamic program. In the single-stage case, the problem is a non-convex optimization, for which an algorithm is presented that ensures a global minimum under a sufficient condition. In the mutistage case, the approximate dynamic programming method of open-loop feedback control is employed. The proposed allocation policies outperform alternative adaptive procedures when the numbers of true null and alternative hypotheses are not too imbalanced. In the case of few alternative hypotheses, the proposed policies are competitive using only a few stages of adaptation. In all cases substantial gains over non-adaptive sensing are observed.
机译:本文考虑了多个二元假设检验,其中在少数阶段从共享预算中自适应分配感测资源。针对最小化贝叶斯风险总和的多阶段分配问题提供了贝叶斯公式,然后将其作为动态程序进行重铸。在单阶段情况下,问题是非凸优化,为此提出了一种算法,该算法可确保在充分条件下的全局最小值。在多阶段情况下,采用开环反馈控制的近似动态编程方法。当真实零值和替代假设的数量不太平衡时,建议的分配策略将优于替代适应性程序。在很少的替代假设的情况下,所提议的政策仅在适应的几个阶段就具有竞争力。在所有情况下,都观察到了比非自适应感测更大的增益。

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