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An online recommendation system based on web usage mining and Semantic Web using LCS Algorithm

机译:基于Web使用挖掘和语义Web的在线推荐系统使用LCS算法

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E commerce has changed the entire look of the world's trading business. Nowadays more and more people are willing to do B2B transactions over the internet. Semantic Web Mining aims at combining the two fast-developing research areas. Web users exhibit a variety of navigational interests through clicking a sequence of web pages. WUM is used for mining the user logs for understanding user interest and generating interesting patterns. Online recommendation and prediction is one of the web usage mining applications. The semantic information of the Web page contents is generally not included in Web. The idea is to improve the results of Recommender system and to overcome the new item problem by exploiting the new semantic structures in the Web. In this paper we present architecture for integrating semantic information about the products with web log data and generate a list of recommended products by using LCS Algorithm. The implementation shows good performance in terms of precision, recall and F1 metrics.
机译:电子商务改变了全球贸易业务的全貌。如今越来越多的人愿意通过互联网进行B2B交易。语义网络挖掘旨在结合两种快速发展的研究领域。通过单击一系列网页,网络用户展示了各种导航利益。 WUM用于挖掘用户日志以了解用户兴趣并生成有趣的模式。在线推荐和预测是Web使用挖掘应用程序之一。网页内容的语义信息通常不包括在Web中。该想法是通过利用Web中的新语义结构来提高推荐系统的结果并克服新项目问题。在本文中,我们呈现用于将关于产品的语义信息与Web日志数据集成,并使用LCS算法生成推荐产品列表。实施在精度,召回和F1指标方面表现出良好的性能。

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