Distributed data classification in sensor networks

Ittay Eyal, I. Keidar, R. Rom
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引用次数: 7

Abstract

Low overhead analysis of large distributed data sets is necessary for current data centers and for future sensor networks. In such systems, each node holds some data value, e.g., a local sensor read, and a concise picture of the global system state needs to be obtained. In resource-constrained environments like sensor networks, this needs to be done without collecting all the data at any location, i.e., in a distributed, manner. To this end, we define the distributed classification problem, in which numerous interconnected nodes compute a classification of their data, i.e., partition these values into multiple collections, and describe each collection concisely. We present a generic algorithm that solves the distributed classification problem and may be implemented in various topologies, using different classification types. For example, the generic algorithm can be instantiated to classify values according to distance, like the famous k-means classification algorithm. However, the distance criterion is often not sufficient to provide good classification results. We present an instantiation of the generic algorithm that describes the values as a Gaussian Mixture (a set of weighted normal distributions), and uses machine learning tools for classification decisions. Simulations show the robustness and speed of this algorithm. We prove that any implementation of the generic algorithm converges over any connected topology, classification criterion and collection representation, in fully asynchronous settings.
传感器网络中的分布式数据分类
对于当前的数据中心和未来的传感器网络来说,大型分布式数据集的低开销分析是必要的。在这样的系统中,每个节点保存一些数据值,例如,本地传感器读取,并且需要获得全局系统状态的简明图像。在像传感器网络这样资源受限的环境中,这需要在不收集任何位置的所有数据的情况下完成,即以分布式的方式。为此,我们定义了分布式分类问题,其中许多相互连接的节点计算其数据的分类,即将这些值划分为多个集合,并对每个集合进行简洁的描述。我们提出了一种解决分布式分类问题的通用算法,它可以在各种拓扑中实现,使用不同的分类类型。例如,可以实例化通用算法来根据距离对值进行分类,就像著名的k-means分类算法一样。然而,距离标准往往不足以提供良好的分类结果。我们提出了一个通用算法的实例,该算法将值描述为高斯混合(一组加权正态分布),并使用机器学习工具进行分类决策。仿真结果表明了该算法的鲁棒性和速度。我们证明了在完全异步设置下,任何通用算法的实现都收敛于任何连接拓扑、分类标准和集合表示。
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