Prediction of User's Web-Browsing Behavior: Application of Markov Model.

M A Awad, I Khalil
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引用次数: 143

Abstract

Web prediction is a classification problem in which we attempt to predict the next set of Web pages that a user may visit based on the knowledge of the previously visited pages. Predicting user's behavior while serving the Internet can be applied effectively in various critical applications. Such application has traditional tradeoffs between modeling complexity and prediction accuracy. In this paper, we analyze and study Markov model and all- Kth Markov model in Web prediction. We propose a new modified Markov model to alleviate the issue of scalability in the number of paths. In addition, we present a new two-tier prediction framework that creates an example classifier EC, based on the training examples and the generated classifiers. We show that such framework can improve the prediction time without compromising prediction accuracy. We have used standard benchmark data sets to analyze, compare, and demonstrate the effectiveness of our techniques using variations of Markov models and association rule mining. Our experiments show the effectiveness of our modified Markov model in reducing the number of paths without compromising accuracy. Additionally, the results support our analysis conclusions that accuracy improves with higher orders of all- Kth model.

用户网络浏览行为预测:马尔可夫模型的应用。
Web预测是一个分类问题,在这个问题中,我们试图根据之前访问过的页面的知识来预测用户可能访问的下一组Web页面。在服务互联网的同时预测用户的行为可以有效地应用于各种关键应用。这种应用程序在建模复杂性和预测精度之间进行了传统的权衡。本文对Web预测中的马尔可夫模型和全k阶马尔可夫模型进行了分析和研究。我们提出了一个新的改进的马尔可夫模型来缓解路径数量的可扩展性问题。此外,我们提出了一个新的两层预测框架,该框架基于训练样例和生成的分类器创建一个示例分类器EC。我们证明了这种框架可以在不影响预测精度的情况下提高预测时间。我们使用标准基准数据集来分析、比较和演示我们使用马尔可夫模型和关联规则挖掘的变体技术的有效性。我们的实验证明了改进的马尔可夫模型在不影响精度的情况下减少路径数量的有效性。此外,结果支持了我们的分析结论,即全k阶模型的阶数越高,精度越高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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