基于聚类的网页预测

R. Dutta, A. Kundu, Debajyoti Mukhopadhyay
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引用次数: 11

摘要

网页预测通过提前预测和提取下一个请求可能出现的网页,从而减少用户的延迟,起到了重要的作用。用户通过输入URL或搜索某个主题或通过同一主题的链接来上网。对于搜索和链接预测,聚类起着重要的作用。除了主题之外,导航行为也不容忽视。本文利用聚类技术和马尔可夫模型提出了一种重视用户兴趣和用户导航行为的网页预测模型。聚类技术用于相似网页的积累。相同类型的相似网页位于同一簇中,包含网页的簇在会话主题方面具有相似性。考虑的聚类算法为K-means和K- medium,其中K由HITS算法确定。最后,将预测的网页以元胞自动机的形式存储,提高了系统的存储效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering-based web page prediction
Web page prediction plays an important role by predicting and fetching probable web page of next request in advance, resulting in reducing the user latency. The users surf the internet either by entering URL or search for some topic or through link of same topic. For searching and for link prediction, clustering plays an important role. Besides the topic, navigational behaviour is not ignored. This paper proposes a web page prediction model giving significant importance to the user's interest using the clustering technique and the navigational behaviour of the user through Markov model. The clustering technique is used for the accumulation of the similar web pages. Similar web pages of same type reside in the same cluster, the cluster containing web pages have the similarity with respect to topic of the session. The clustering algorithms considered are K-means and K-mediods, where K is determined by HITS algorithm. Finally, the predicted web pages are stored in form of cellular automata to make the system more memory efficient.
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