Prefetching based on web usage mining

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Abstract

This paper introduces a new technique for prefetching web content by learning the access patterns of individual users. The prediction scheme for prefetching is based on a learning algorithm, called Fuzzy-LZ, which mines the history of user access and identifies patterns of recurring accesses. This algorithm is evaluated analytically via a metric called learnability and validated experimentally by correlating learnability with prediction accuracy. A web prefetching system that incorporates Fuzzy-LZ is described and evaluated. Our experiments demonstrate that Fuzzy-LZ prefetching provides a gain of 41.5 % in cache hit rate over pure caching. This gain is highest for those users who are neither highly predictable nor highly random, which turns out to be the vast majority of users in our workload. The overhead of our prefetching technique for a typical user is 2.4 prefetched pages per user request. © IFIP International Federation for Information Processing 2003.

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APA

Sow, D. M., Olshefski, D. P., Beigi, M., & Banavar, G. (2003). Prefetching based on web usage mining. Lecture Notes in Computer Science (Including Subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 2672, 262–281. https://doi.org/10.1007/3-540-44892-6_14

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