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Use of social network information to enhance collaborative filtering performance

机译:使用社交网络信息来增强协作过滤性能

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When people make decisions, they usually rely on recommendations from friends and acquaintances. Although collaborative filtering (CF), the most popular recommendation technique, utilizes similar neighbors to generate recommendations, it does not distinguish friends in a neighborhood from strangers who have similar tastes. Because social networking Web sites now make it easy to gather social network information, a study about the use of social network information in making recommendations will probably produce productive results.rnIn this study, we developed a way to increase recommendation effectiveness by incorporating social network information into CF. We collected data about users' preference ratings and their social network relationships from a social networking Web site. Then, we evaluated CF performance with diverse neighbor groups combining groups of friends and nearest neighbors. Our results indicated that more accurate prediction algorithms can be produced by incorporating social network information into CF.
机译:人们做出决定时,他们通常会依赖朋友和熟人的推荐。尽管协作过滤(CF)是最流行的推荐技术,它利用相似的邻居来生成推荐,但是它并不能将附近的朋友与具有相似爱好的陌生人区分开。由于社交网站现在使收集社交网络信息变得容易,因此有关在推荐中使用社交网络信息的研究可能会产生富有成果的结果。rn在本研究中,我们开发了一种通过合并社交网络信息来提高推荐效果的方法进入CF。我们从社交网站收集了有关用户的偏好等级及其社交网络关系的数据。然后,我们通过结合不同的朋友和最近邻居的邻居组来评估CF性能。我们的结果表明,将社交网络信息纳入CF可以产生更准确的预测算法。

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