HYDRA: large-scale social identity linkage via heterogeneous behavior modeling

Siyuan Liu, Shuhui Wang, Feida Zhu, Jinbo Zhang, R. Krishnan
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引用次数: 249

Abstract

We study the problem of large-scale social identity linkage across different social media platforms, which is of critical importance to business intelligence by gaining from social data a deeper understanding and more accurate profiling of users. This paper proposes HYDRA, a solution framework which consists of three key steps: (I) modeling heterogeneous behavior by long-term behavior distribution analysis and multi-resolution temporal information matching; (II) constructing structural consistency graph to measure the high-order structure consistency on users' core social structures across different platforms; and (III) learning the mapping function by multi-objective optimization composed of both the supervised learning on pair-wise ID linkage information and the cross-platform structure consistency maximization. Extensive experiments on 10 million users across seven popular social network platforms demonstrate that HYDRA correctly identifies real user linkage across different platforms, and outperforms existing state-of-the-art algorithms by at least 20% under different settings, and 4 times better in most settings.
HYDRA:基于异质行为模型的大规模社会身份关联
我们研究了跨不同社交媒体平台的大规模社会身份关联问题,通过从社交数据中获得对用户更深入的理解和更准确的分析,这对商业智能至关重要。本文提出了HYDRA解决框架,该框架包括三个关键步骤:(1)通过长期行为分布分析和多分辨率时间信息匹配建模异构行为;(二)构建结构一致性图,衡量不同平台用户核心社会结构的高阶结构一致性;(III)通过对成对ID链接信息的监督学习和跨平台结构一致性最大化组成的多目标优化学习映射函数。在7个流行的社交网络平台上对1000万用户进行的大量实验表明,HYDRA正确识别了不同平台上的真实用户链接,并且在不同设置下比现有的最先进算法高出至少20%,在大多数设置下高出4倍。
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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