The pervasive use of social media provides massive data about individuals' online social activities and their social relations. The building block of most existing recommendation systems is the similarity between users with social relations, i.e., friends. While friendship ensures some homophily, the similarity of a user with her friends can vary as the number of friends increases. Research from sociology suggests that friends are more similar than strangers, but friends can have different interests. Exogenous information such as comments and ratings may help discern different degrees of agreement (i.e., congruity) among similar users. In this paper, we investigate if users' congruity can be incorporated into recommendation systems to improve it's performance. Experimental results demonstrate the effectiveness of embedding congruity related information into recommendation systems.
翻译:社交媒体的普及使用为个人在线社会活动及其社会关系提供了大量数据。大多数现有建议系统的基石是社会关系用户(即朋友)之间的相似性。虽然友谊可以确保某些同质性,但用户与朋友的相似性随朋友人数的增加而变化。社会学研究表明,朋友比陌生人更相似,但朋友可以有不同的利益。评论和评级等异质信息可能有助于发现类似用户之间的不同程度的一致(即一致性)。本文中,我们调查用户的一致性是否可以纳入建议系统以改善其业绩。实验结果表明,将一致性相关信息纳入建议系统是有效的。