在使用流中使用不断变化的配置文件建模和聚类用户

Chongsheng Zhang, F. Masseglia, Xiangliang Zhang
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引用次数: 6

摘要

如今,人们越来越需要数据流挖掘技术来动态地发现重要的模式。现有的数据流模型和算法通常假设数据流中的用户记录或配置文件一旦到达就不会被更新或修改。然而,在各种应用程序(如Web使用)中,用户的记录/概要文件可以随着时间的推移而变化。这种流数据以两种形式发展,一种是传统数据流中的元组或事务流,更重要的是,流中的用户记录/配置文件的发展。这样的数据流给探索用户行为的建模和聚类带来了困难。本文提出了三个模型来概括这类数据流,即批处理模型、演化对象模型和动态数据流模型。通过创建、更新和删除用户配置文件,这些模型将每个用户的行为总结为一个配置文件对象。基于这些模型,采用聚类算法从概要文件对象中发现感兴趣的用户组。我们在一个大型的真实数据集上对所有提出的模型进行了评估,结果表明DDS模型比其他两种模型更有效地总结了具有演化元组的数据流,并为用户提供了更好的聚类依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Clustering Users with Evolving Profiles in Usage Streams
Today, there is an increasing need of data stream mining technology to discover important patterns on the fly. Existing data stream models and algorithms commonly assume that users' records or profiles in data streams will not be updated or revised once they arrive. Nevertheless, in various applications such as Web usage, the records/profiles of the users can evolve along time. This kind of streaming data evolves in two forms, the streaming of tuples or transactions as in the case of traditional data streams, and more importantly, the evolving of user records/profiles inside the streams. Such data streams bring difficulties on modeling and clustering for exploringusers' behaviors. In this paper, we propose three models to summarize this kind of data streams, which are the batch model, the Evolving Objects (EO) model and the Dynamic Data Stream (DDS) model. Through creating, updating and deleting user profiles, these models summarize the behaviors of each user as a profile object. Based upon these models, clustering algorithms are employed to discover interesting user groups from the profile objects. We have evaluated all the proposed models on a large real-world data set, showing that the DDS model summarizes the data streams with evolving tuples more efficiently and effectively, and provides better basis for clustering users than the other two models.
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