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首页> 外文期刊>Indian Journal of Science and Technology >A Model based Resource Recommender System on Social Tagging Data
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A Model based Resource Recommender System on Social Tagging Data

机译:基于模型的社会标签数据资源推荐系统

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摘要

Web (2.0) is the place where people can upload, share and access various sources of information. Web (2.0) has given rise to information overloading problem and knowledge starvation. Recommender Systems (RS) helps in alleviating this overloading problem and gaining the exact information what we need. RS suggest user items or products based on their browsing or purchasing history. RS suggest list of items by identifying similar users with explicit user-item rating. But, in real time applications most users do not rate items. In current web (2.0) social tagging applications help us to find useritem ratings implicitly based on the user’s interest and preferences they give for the list of items. In this paper we have proposed a model based resource recommendation on social tagging information which has improved the performance of the RS. In the proposed system the topic is identified from the tagged data, based on the topic user profile is constructed by semantic approach and the recommendation is done for the user.
机译:Web(2.0)是人们可以上载,共享和访问各种信息源的地方。 Web(2.0)引起了信息超载问题和知识匮乏。推荐系统(RS)有助于减轻此超载问题并获得我们所需的确切信息。 RS根据用户的浏览或购买历史记录来建议他们使用它们。 RS通过识别具有明确用户项目评分的相似用户来建议项目列表。但是,在实时应用程序中,大多数用户不会对项目进行评分。在当前的网络(2.0)中,社交标记应用程序可以帮助我们根据用户对商品列表的兴趣和偏好,隐式地找到用户商品评分。在本文中,我们提出了一种基于模型的社会标签信息资源推荐,从而提高了RS的性能。在提出的系统中,从主题数据中识别出主题,然后基于主题用户配置文件通过语义方法构造主题,并为用户进行推荐。

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