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Combining Collaborative Filtering and Text Similarity for Expert Profile Recommendations in Social Websites

机译:在社交网站中相结合的协作过滤和文本相似性建议

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People-to-people recommendation differ from item recommendations in a number of ways, one of which is that individuals add information to their profile which is often critical in determining a good match. The most critical information can be in the form of free text or personal tags. We explore text-mining techniques to improve classical collaborative filtering methods for a site aimed at matching people who are looking for expert advice on a specific topic. We compare results from a LSA-based text similarity analysis, a simple user-user collaborative filter, and a combination of both methods used to recommend people to meet for a knowledge-sharing website. Evaluations show that LSA similarity has a better precision at low recall rates, whereas collaborative filters have a better precision at higher recall rates. A combination of both can outperform the results of the simpler algorithms.
机译:人们对人们的建议在多种方式中与项目建议不同,其中一个是个人在其档案中添加信息,这在确定好的比赛时通常是至关重要的。最关键的信息可以是自由文本或个人标签的形式。我们探索了文本挖掘技术,以改善旨在匹配寻找特定主题专家建议的人员的网站的经典协作过滤方法。我们将基于LSA的文本相似性分析的结果进行比较,简单的用户用户协同过滤器以及用于推荐人们以满足知识共享网站的两种方法的组合。评估表明,LSA相似度在低召回速率下具有更好的精度,而协作滤波器在更高的召回率下具有更好的精度。两者的组合可以越优于更简单的算法的结果。

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