基于链接推荐的社交媒体自我网络演化

L. Aiello, Nicola Barbieri
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引用次数: 25

摘要

自我网络是社交图谱中的基本结构,但其演变过程仍未被广泛探索。在网络环境中,一个关键问题是链接推荐系统如何扭曲这些网络的增长,可能会限制多样性。为了说明这个问题,我们分析了从Flickr和Tumblr中提取的1.7亿个自我网络的完整时间演变,比较了自发创建的链接和算法推荐的链接。研究发现,自我网络的演化是突发性的、社区驱动的,其特征是直径急剧增加、轻微缩小和稳定的后续阶段。建议支持流行的和连接良好的节点,限制直径的扩大。通过从观测数据中检测因果关系的匹配实验,我们发现推荐引入的偏差在邻居选择过程中促进了全局多样性。最后,通过两个链接预测实验,我们展示了如何使用我们分析的见解来提高社交推荐系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolution of Ego-networks in Social Media with Link Recommendations
Ego-networks are fundamental structures in social graphs, yet the process of their evolution is still widely unexplored. In an online context, a key question is how link recommender systems may skew the growth of these networks, possibly restraining diversity. To shed light on this matter, we analyze the complete temporal evolution of 170M ego-networks extracted from Flickr and Tumblr, comparing links that are created spontaneously with those that have been algorithmically recommended. We find that the evolution of ego-networks is bursty, community-driven, and characterized by subsequent phases of explosive diameter increase, slight shrinking, and stabilization. Recommendations favor popular and well-connected nodes, limiting the diameter expansion. With a matching experiment aimed at detecting causal relationships from observational data, we find that the bias introduced by the recommendations fosters global diversity in the process of neighbor selection. Last, with two link prediction experiments, we show how insights from our analysis can be used to improve the effectiveness of social recommender systems.
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