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With a Little Help from My Friends: Generating Personalized Book Recommendations Using Data Extracted from a Social Website

机译:在朋友的帮助下:使用从社交网站提取的数据生成个性化的书本推荐书

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With the large amount of books available nowadays, users are overwhelmed with choices when they attempt to find books of interest. While existing book recommendation systems, which are based on either collaborative filtering, content-based, or hybrid methods, suggest books (among the millions available) that might be appealing to the users, their recommendations are not personalized enough to meet users' expectations due to their collective assumption on group preference and/or exact content matching, which is a failure. To address this problem, we have developed PReF, a Personalized Recommender that relies on Friendships established by user son a social website, such as Library Thing, to make book recommendations tailored to individual users. In selecting books to be recommended to a user U, who is interested in a book B, PReF (i) considers books belonged to U's friends, (ii) applies word-correlation factors to disclose books similar in contents to B, (iii) depends on the ratings given to books by U's friends to identify highly-regarded books, and (iv) determine show reliable individual friends of U are in providing books from their own catalogs (that are similar in content to B)to be recommended. We have conducted an empirical study and verified that (i) relying on data extracted from social websites improves the effectiveness of book recommenders and (ii) PReF outperforms the recommenders employed by Amazon and Library Thing.
机译:当今有大量书籍可供使用,当用户尝试查找感兴趣的书籍时,选择不胜其烦。现有的基于协作筛选,基于内容或混合方法的图书推荐系统会向用户推荐可能吸引用户的图书(数以百万计),但由于其推荐内容不​​够个性化,无法满足用户的期望他们对小组偏好和/或精确的内容匹配的集体假设,这是一个失败。为了解决这个问题,我们开发了PReF,这是一种个性化推荐器,它依赖于用户儿子通过社交网站(例如Library Thing)建立的友谊来制定针对各个用户的推荐书。在选择要推荐给对书籍B感兴趣的用户U的书籍时,PReF(i)认为书籍属于U的朋友,(ii)应用词相关因子来披露内容与B相似的书籍,(iii)取决于U的朋友对书的评级,以识别备受推崇的书,并且(iv)确定U的可靠个人朋友正在提供来自他们自己目录(内容与B相似)的书以被推荐。我们进行了一项实证研究,验证了(i)依靠从社交网站提取的数据可以提高图书推荐者的有效性,并且(ii)PReF优于Amazon和Library Thing所采用的推荐者。

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