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Bayesian Multiple Hypothesis Testing For Distributed Detection In Sensor Networks

机译:传感器网络中分布式检测的贝叶斯多重假设检验

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摘要

In this paper we present a method for multiple hypothesis testing in sensor networks. Standard multiple testing methods ignore spatial dependencies between sensors, and thus suffer from a drastic loss of detection sensitivity. We introduce a Bayesian approach for taking the underlying spatial structure into account. By assigning a Gaus-sian process prior to a latent variable over the field, we locate areas where most of the received test statistics are caused by true signals. In these regions we relax the significance threshold in a manner which improves detection sensitivity while controlling overall false discovery rate at a tolerated level. The proposed method requires only minimal assumptions, but allows the user to incorporate their possible prior knowledge in to the model to refine inference. The benefits of the proposed method are demonstrated in simulation by comparing to standard multiple testing methods.
机译:在本文中,我们提出了一种在传感器网络中进行多重假设检验的方法。标准的多种测试方法忽略了传感器之间的空间依赖性,因此遭受了检测灵敏度的极大损失。我们引入一种贝叶斯方法来考虑潜在的空间结构。通过在该字段上的潜在变量之前分配高斯过程,我们可以确定大多数接收到的测试统计信息是由真实信号引起的区域。在这些区域中,我们以提高检测灵敏度的方式放宽了显着性阈值,同时将总体错误发现率控制在可容忍的水平。所提出的方法仅需要最小的假设,但允许用户将其可能的先验知识整合到模型中以完善推理。与标准的多种测试方法相比,该方法的优势在仿真中得到了证明。

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