Handling Churn in Similarity Based Clustering Overlays Using Weighted Benefit

I. Bukhari, A. Harwood, S. Karunasekera
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引用次数: 2

Abstract

Similarity based clustering (SBC) overlays are decentralized networks of nodes on the Internet edge, where each node maintains some number of direct connections to other nodes that are most "similar" to it. The challenge is: how do the nodes in the overlay converge to and maintain the most similar neighbors, given that the network is decentralized, is subject to churn and that similarity varies over time. Protocols that simultaneously provide fast convergence and low bandwidth consumption are the objective of this research. We present a protocol, that we call Weighted Benefit Scheme (WBS), that improves upon existing state-of-the-art in this area: it has equivalent convergence rate to the Optimum Benefit Protocol while simultaneously handling churn competitively to the Vicinity protocol. We use real world datasets from Yahoo WebScope that comprises of 15,400 users with 354,000 ratings about 1000 songs and our experiments are performed on the simulation test-bed PeerNet.
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使用加权收益处理基于相似性的聚类重叠中的波动
基于相似性的聚类(SBC)覆盖是Internet边缘上分散的节点网络,其中每个节点与与它最“相似”的其他节点保持一定数量的直接连接。面临的挑战是:考虑到网络是分散的,容易发生波动,而且相似性随时间而变化,覆盖层中的节点如何收敛并保持最相似的邻居。同时提供快速收敛和低带宽消耗的协议是本研究的目标。我们提出了一种协议,我们称之为加权收益方案(WBS),它改进了该领域的现有技术:它具有与最优收益协议相当的收敛速度,同时与邻近协议竞争处理流失。我们使用来自Yahoo WebScope的真实世界数据集,其中包括15400名用户和354,000个评分,大约1000首歌曲,我们的实验是在模拟测试平台PeerNet上进行的。
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