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An efficient algorithm for web recommendation systems.
| Content Provider | CiteSeerX |
|---|---|
| Abstract | Abstract — Different efforts have been made to address the problem of information overload on the Internet. Web recommendation systems based on web usage mining try to mine users ’ behavior patterns from web access logs, and recommend pages to the online user by matching the user’s browsing behavior with the mined historical behavior patterns. In this paper we propose effective and scalable technique to solve the web page recommendation problem. We use distributed learning automata to learn the behavior of previous users ’ and cluster pages based on learned pattern. One of the challenging problems in recommendation systems is dealing with unvisited or newly added pages. As they would never be recommended, we need to provide an opportunity for these rarely visited or newly added pages to be included in the recommendation set. By considering this problem, and introducing a novel Weighted Association Rule mining algorithm, we present an algorithm for recommendation purpose. We employ the HITS algorithm to extend the recommendation set. We evaluate proposed algorithm under different settings and show how this method can improve the overall quality of web recommendations. Keywords- web recommender system; association rules; data mining, learning automata, web minig I. |
| File Format | |
| Access Restriction | Open |
| Subject Keyword | Web Recommendation System Efficient Algorithm Previous User Learned Pattern Data Mining Different Setting Mined Historical Behavior Pattern Overall Quality Hit Algorithm Cluster Page User Behavior Pattern Keywords Web Recommender System Recommendation System Web Usage Mining Try Association Rule Recommendation Purpose Web Page Recommendation Problem Web Access Log Scalable Technique Abstract Different Effort Web Recommendation Information Overload Online User Distributed Learning Automaton |
| Content Type | Text |
| Resource Type | Article |