基于Markov参考模型的基于web的偏序显著性排序

Michel Speiser, G. Antonini, A. Labbi
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引用次数: 4

摘要

在文献中,挖掘网络流量数据主要使用顺序模式挖掘技术。最近,引入了一种更强大的模式,称为偏序,希望提供更紧凑的结果集。实现这一目标的进一步方法对顺序模式和部分顺序都有效,包括为频繁模式构建统计显著性测试。我们的方法基于概率生成模型,并提供了一种直接的方法来对提取的模式进行排序。它保留了感兴趣的模式的数量,这取决于应用程序,但提供了发生频率的另一种标准:统计显著性。在本文中,我们重点构建了一阶马尔可夫参考模型下计算偏阶概率的算法,并展示了如何使用这些概率来评估一组挖掘的偏阶的统计显著性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ranking Web-Based Partial Orders by Significance Using a Markov Reference Model
Mining web traffic data has been addressed in literature mostly using sequential pattern mining techniques. Recently, a more powerful pattern called partial order was introduced, with the hope of providing a more compact result set. A further approach towards this goal, valid for both sequential patterns and partial orders, consists in building a statistical significance test for frequent patterns. Our method is based on probabilistic generative models and provides a direct way to rank the extracted patterns. It leaves open the number of patterns of interest, which depends on the application, but provides an alternative criterion to frequency of occurrence: statistical significance. In this paper, we focus on the construction of an algorithm which calculates the probability of partial orders under a first-order Markov reference model, and we show how to use those probabilities to assess the statistical significance of a set of mined partial orders.
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