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A user-concept matrix clustering algorithm for efficient next page prediction

机译:一种用于高效下一页预测的用户概念矩阵聚类算法

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摘要

Web personalisation is the process of customising a website's content to users' specific needs. Next page prediction is one of the basic techniques needed for personalisation. In this paper, we present a framework for next page prediction that uses user-concept matrix clustering to integrate semantic information into web usage mining process for the purpose of improving prediction quality. We use clustering to group users based on common interests expressed as concept vectors and search only the set of frequent patterns matched to a user's cluster to make a prediction. The proposed framework was tested over two different datasets and compared to usage mining techniques that search the whole set of frequent patterns. The results showed a 33% and 2.1% improvement in the average system accuracy as well as 6.6% and 7.3% improvement in the average system precision and a 6.5% and 1.7% in coverage for the two datasets respectively, within the same computation timeframe.
机译:Web个性化是根据用户的特定需求自定义网站内容的过程。下一页预测是个性化所需的基本技术之一。在本文中,我们提出了一种用于下一页预测的框架,该框架使用用户概念矩阵聚类将语义信息集成到Web使用挖掘过程中,以提高预测质量。我们使用聚类根据表示为概念向量的共同兴趣对用户进行分组,并仅搜索与用户的聚类匹配的一组频繁模式以进行预测。所提出的框架已在两个不同的数据集上进行了测试,并与使用习惯挖掘技术(用于搜索整个频繁模式集)进行了比较。结果显示,在相同的计算时间范围内,两个数据集的平均系统精度分别提高了33%和2.1%,平均系统精度分别提高了6.6%和7.3%,覆盖率分别为6.5%和1.7%。

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