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Optimal decision rules for distributed binary decision tree classifiers

机译:分布式二叉决策树分类器的最优决策规则

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Abstract: We consider the problem of recognizing M objects using a fusion center with N parallel sensors. Unlike conventional M-ary decision fusion systems, our fusion system breaks a complex M-ary decision fusion problem into a sequence of simpler binary decision fusion problems. In our systems, a binary decision tree (BDT) is employed to hierarchically partition the object space at all system elements. The traversal of the BDT is synchronized by the fusion center. The sensor observations are assumed conditionally independent given the unknown object type. We use a greedy performance criterion in which the probability of error is minimized at individual nodes. Using this performance criterion, we characterize the optimal fusion rules and the optimal sensor rules. We compare our results with some important results on conventional one-stage binary fusion.!7
机译:摘要:我们考虑使用带有N个并行传感器的融合中心识别M个对象的问题。与常规的Mary决策融合系统不同,我们的融合系统将复杂的Mary决策融合问题分解为一系列更简单的二进制决策融合问题。在我们的系统中,采用二进制决策树(BDT)对所有系统元素上的对象空间进行分层划分。 BDT的遍历由融合中心同步。在给定未知物体类型的情况下,假设传感器的观测条件独立。我们使用贪婪的性能标准,在该标准中,在各个节点处的错误概率最小。使用此性能标准,我们表征了最佳融合规则和最佳传感器规则。我们将我们的结果与常规一阶段二进制融合中的一些重要结果进行了比较!7

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