Classifying behavior patterns of user nodes

Gyuwon Song, Suhyun Kim
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Abstract

To increase the scalability of cloud computing, utilizing resources of individual users has been widely adopted especially in video streaming services. Accurately predicting behavior of user nodes is critical to achieve a high efficiency in such a peer-assisted system. Though there have been many measurement studies on peer-to-peer systems, most of them have focused on the design and characterization of the systems. Thus the behavior patterns of individual nodes have seldom been studied. In this paper, we present new techniques for classifying behavior of nodes in terms of availability and compare them with naive manual classification. We apply a k-means clustering algorithm with various classification criteria on real trace data of a peer-to-peer system. Our analysis shows that there are three dominant time zones with respect to the availability peak time. Our study will give a useful hint to a system designer in handling churns more efficiently based on the peer classification.
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对用户节点行为模式进行分类
为了提高云计算的可扩展性,利用个人用户的资源已被广泛采用,特别是在视频流服务中。准确预测用户节点的行为是实现这种对等辅助系统高效运行的关键。虽然对点对点系统的测量研究很多,但大多集中在点对点系统的设计和表征上。因此,很少对单个节点的行为模式进行研究。本文提出了一种基于可用性的节点行为分类新方法,并与单纯的人工分类方法进行了比较。对点对点系统的真实轨迹数据应用了具有多种分类标准的k-均值聚类算法。我们的分析表明,就可用性峰值时间而言,有三个主要时区。我们的研究将为系统设计者在基于同伴分类的基础上更有效地处理流失提供有用的提示。
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