Compact representation of coordinated sampling policies for Body Sensor Networks

Shuping Liu, A. Panangadan, A. Talukder, C. Raghavendra
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引用次数: 9

Abstract

Embedded sensors of a Body Sensor Network need to efficiently utilize their energy resources to operate for an extended amount of time. A Markov Decision Process (MDP) framework has been used to obtain a globally optimal policy that coordinated the sampling of multiple sensors to achieve high efficiency in such sensor networks. However, storing the coordinated sampling policy table requires a large amount of memory which may not be available at the embedded sensors. Computing a compact representation of the MDP global policy will be useful for such sensor nodes. In this paper we show that a decision tree-based learning of a compact representation is feasible with little loss in performance. The global optimal policy is computed offline using the MDP framework and this is then used as training data in a decision tree learner. Our simulation results show that both unpruned and high confidence-pruned decision trees provide an error rate of less than 1% while significantly reducing the memory requirements. Ensembles of lower-confidence trees are capable of perfect representation with only small increase in classifier size compared to individual pruned trees.
身体传感器网络协调采样策略的紧凑表示
身体传感器网络的嵌入式传感器需要有效地利用其能量资源来延长工作时间。利用马尔可夫决策过程(MDP)框架获得了一个全局最优策略,该策略协调了多个传感器的采样,从而在传感器网络中实现了高效率。然而,存储协调采样策略表需要大量的内存,而这些内存在嵌入式传感器中可能无法使用。计算MDP全局策略的紧凑表示对于这些传感器节点非常有用。在本文中,我们证明了基于决策树的紧凑表示学习是可行的,并且性能损失很小。使用MDP框架离线计算全局最优策略,然后将其用作决策树学习器中的训练数据。我们的仿真结果表明,未修剪和高置信度修剪的决策树都提供了小于1%的错误率,同时显著降低了内存需求。与单个修剪过的树相比,低置信度树的集成能够完美地表示分类器大小,仅增加少量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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