下一页访问预测的集成模型

F. Khalil, Jiuyong Li, Hua Wang
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引用次数: 48

摘要

准确的下一个网页预测有利于许多应用程序,特别是电子商务。为此最广泛使用的技术是马尔可夫模型、关联规则和聚类。然而,每种技术都有其自身的局限性,特别是在准确性和空间复杂性方面。本文采用聚类、关联规则和马尔可夫模型相结合的新方法,提高了预测精度和状态空间复杂度。这三种技术被整合在一起,以最大限度地发挥其优势。综合模型比单独模型和其他综合模型具有更好的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated model for next page access prediction
Accurate next web page prediction benefits many applications, e-business in particular. The most widely used techniques for this purpose are Markov Model, association rules and clustering. However, each of these techniques has its own limitations, especially when it comes to accuracy and space complexity. This paper presents an improved prediction accuracy and state space complexity by using novel approaches that combine clustering, association rules and Markov Models. The three techniques are integrated together to maximise their strengths. The integration model has been shown to achieve better prediction accuracy than individual and other integrated models.
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