网页推荐与网页导航预测框架

D. Sejal, T. Kamalakant, Dinesh Anvekar, K. Venugopal, S. S. Iyengar, L. Patnaik
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引用次数: 0

摘要

在web日志中产生了大量的用户请求数据。基于之前访问过的页面来预测用户未来的请求对于网页推荐、减少延迟和在线广告都很重要。这些应用程序损害了预测的准确性和建模的复杂性。我们提出了一个网页推荐的网页导航预测框架WNPWR,该框架基于会话作为训练样例创建并生成分类器。由于会话被用作训练示例,它们是通过计算访问网页的平均时间来创建的,而不是使用30分钟作为默认超时的传统方法。本文使用标准的基准数据集来分析和比较我们的框架和两层预测框架。仿真结果表明,我们生成的分类器框架WNPWR在预测精度和预测时间上都优于两层预测框架。
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Webpage recommendation with web navigation prediction framework
Huge amount of user request data is generated in web-log. Predicting users' future requests based on previously visited pages is important for webpage recommendation, reduction of latency and online advertising. These applications compromise with prediction accuracy and modelling complexity. We propose a web navigation prediction framework for webpage recommendation WNPWR which creates and generates a classifier based on sessions as training examples. As sessions are used as training examples, they are created by calculating the average time on visiting webpages rather than traditional method which uses 30 minutes as default timeout. This paper uses standard benchmark datasets to analyse and compare our framework with two-tier prediction framework. Simulation results show that our generated classifier framework WNPWR outperforms two-tier prediction framework in prediction accuracy and time.
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