2019年度 人工知能学会全国大会(第33回)

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国際セッション

国際セッション » [ES] E-2 Machine learning

[3B4-E-2] Machine learning: social links

2019年6月6日(木) 15:50 〜 17:30 B会場 (2F メインホールB)

Chair: Lieu-Hen Chen (National Chi Nan University), Review: Yasufumi Takama (Tokyo Metropolitan University)

16:10 〜 16:30

[3B4-E-2-02] A Community Sensing Approach for User Identity Linkage

〇Zexuan Wang1, Teruaki Hayashi1, Yukio Ohsawa1 (1. Department of Systems Innovation, School of Engineering, The University of Tokyo)

キーワード:User Identity Linkage, Network Embedding, Clustering

User Identity Linkage aims to detect the same individual or entity across different Online Social Networks, which is a crucial step for information diffusion among isolated networks. While many pair-wise user linking methods have been proposed on this important topic, the community information naturally exists in the network is often discarded. In this paper, we proposed a novel embedding-based approach that considers both individual similarity and community similarity by jointly optimize them in a single loss function. Experiments on real dataset obtained from Foursquare and Twitter illustrate that proposed method outperforms other commonly used baselines that only consider the individual similarity.