Investigation of Egocentric Social Structures for Diversity-Enhancing Followee Recommendations

Erjon Skenderi, Ekaterina Olshannikova, Thomas Olsson, Jukka Huhtamäki, Sami Koivunen, Peng Yao, H. Huttunen
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引用次数: 2

Abstract

The increasing amount of data in social media enables new advanced user modeling approaches. This paper focuses on user profiling for diversity-enhancing recommender systems for finding new followees on Twitter. By combining social network analysis with Latent Dirichlet Allocation based content analysis, we defined three egocentric structural positions on the network extracted from Twitter data: Mentions of Mentions, Community Cluster, Dormant Ties (and the rest as a baseline condition). In addition to describing the data analysis procedure, we report preliminary empirical findings on a user-centered evaluation study of recommendations based on the proposed matching strategy and the presented structural positions. The investigation of the possible overlaps of the groups and the participants' evaluations of perceived relevance of the recommendation imply that the three positions are sufficiently mutually exclusive and thus could serve as new diversity-enhancing mechanisms in various people recommender systems.
以自我为中心的社会结构对多样性增强的后续建议的研究
社交媒体中不断增加的数据量使新的高级用户建模方法成为可能。本文重点研究了在Twitter上寻找新追随者的多样性增强推荐系统的用户分析。通过将社交网络分析与基于潜在狄利克雷分配的内容分析相结合,我们从Twitter数据中提取了网络上三个以自我为中心的结构位置:提及、社区集群、休眠关系(以及其他作为基线条件)。除了描述数据分析过程之外,我们还报告了基于所提出的匹配策略和所呈现的结构位置的以用户为中心的推荐评估研究的初步实证结果。对这些群体可能重叠的调查和参与者对推荐的感知相关性的评价表明,这三个职位是充分互斥的,因此可以作为各种人员推荐系统中新的增强多样性的机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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