论文标题
分布式有限时间K-均值聚类,量化的沟通和变速箱停止
Distributed Finite Time k-means Clustering with Quantized Communucation and Transmission Stopping
论文作者
论文摘要
在本文中,我们提出了一种分布式的算法,该算法以带有定向通信链接的多机构系统的分布式方式以分布式方式实现$ k $ -MEANS算法。 The goal of $k$-means is to partition the network's agents in mutually exclusive sets (groups) such that agents in the same set have (and possibly share) similar information and are able to calculate a representative value for their group.During the operation of our distributed algorithm, each node (i) transmits quantized values in an event-driven fashion, and (ii) exhibits distributed stopping capabilities.传输量化值会导致更有效地使用可用的带宽并减少通信瓶颈。同样,为了保留可用资源,节点能够分布确定它们是否可以终止所提出的算法的操作。我们表征了所提出的分布式算法的属性,并表明其执行(在任何静态且牢固地连接的Digraph上)将在有限的时间内将所有代理分配为相互排斥的群集。我们以说明拟议算法的操作,性能和潜在优势的示例结束。
In this paper, we present a distributed algorithm which implements the $k$-means algorithm in a distributed fashion for multi-agent systems with directed communication links. The goal of $k$-means is to partition the network's agents in mutually exclusive sets (groups) such that agents in the same set have (and possibly share) similar information and are able to calculate a representative value for their group.During the operation of our distributed algorithm, each node (i) transmits quantized values in an event-driven fashion, and (ii) exhibits distributed stopping capabilities. Transmitting quantized values leads to more efficient usage of the available bandwidth and reduces the communication bottleneck. Also, in order to preserve available resources, nodes are able to distributively determine whether they can terminate the operation of the proposed algorithm. We characterize the properties of the proposed distributed algorithm and show that its execution (on any static and strongly connected digraph) will partition all agents to mutually exclusive clusters in finite time. We conclude with examples that illustrate the operation, performance, and potential advantages of the proposed algorithm.