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Structured Learning from Heterogeneous Behavior for Social Identity Linkage.

Authors :
Liu, Siyuan
Wang, Shuhui
Zhu, Feida
Source :
IEEE Transactions on Knowledge & Data Engineering. Jul2015, Vol. 27 Issue 7, p2005-2019. 15p.
Publication Year :
2015

Abstract

Social identity linkage across different social media platforms is of critical importance to business intelligence by gaining from social data a deeper understanding and more accurate profiling of users. In this paper, we propose a solution framework, \sf HYDRA<alternatives> <inline-graphic xlink:type="simple" xlink:href="liu-ieq1-2397434.gif"/></alternatives>, which consists of three key steps: (I) we model heterogeneous behavior by long-term topical distribution analysis and multi-resolution temporal behavior matching against high noise and information missing, and the behavior similarity are described by multi-dimensional similarity vector for each user pair; (II) we build structure consistency models to maximize the structure and behavior consistency on users’ core social structure across different platforms, thus the task of identity linkage can be performed on groups of users, which is beyond the individual level linkage in previous study; and (III) we propose a normalized-margin-based linkage function formulation, and learn the linkage function by multi-objective optimization where both supervised pair-wise linkage function learning and structure consistency maximization are conducted towards a unified Pareto optimal solution. The model is able to deal with drastic information missing, and avoid the curse-of-dimensionality in handling high dimensional sparse representation. Extensive experiments on 10 million users across seven popular social networks platforms demonstrate that \sf HYDRA<alternatives> <inline-graphic xlink:type="simple" xlink:href="liu-ieq2-2397434.gif"/></alternatives> correctly identifies real user linkage across different platforms from massive noisy user behavior data records, and outperforms existing state-of-the-art approaches by at least 20 percent under different settings, and four times better in most settings. [ABSTRACT FROM PUBLISHER]

Details

Language :
English
ISSN :
10414347
Volume :
27
Issue :
7
Database :
Academic Search Index
Journal :
IEEE Transactions on Knowledge & Data Engineering
Publication Type :
Academic Journal
Accession number :
103120632
Full Text :
https://doi.org/10.1109/TKDE.2015.2397434