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BASS: A Bootstrapping Approach for Aligning Heterogenous Social Networks

机译:BASS:一种用于对齐异构社交网络的引导方法

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摘要

Most people now participate in more than one online social network (OSN). However, the alignment indicating which accounts belong to same natural person is not revealed. Aligning these isolated networks can provide united environment for users and help to improve online personalization services. In this paper, we propose a bootstrapping approach BASS to recover the alignment. It is an unsupervised general-purposed approach with minimum limitation on target networks and users, and is scalable for real OSNs. Specifically, we jointly model user consistencies of usernames, social ties, and user generated contents, and then employ EM algorithm for the parameter learning. For analysis and evaluation, We collect and publish large-scale data sets covering various types of OSNs and multi-lingual scenarios. We conduct extensive experiments to demonstrate the performance of BASS, concluding that our approach significantly outperform state-of-the-art approaches.
机译:现在大多数人参加了多个在线社交网络(OSN)。但是,没有揭示指示哪个账户属于同一自然人的对齐。对齐这些隔离网络可以为用户提供联合环境,并有助于改善在线个性化服务。在本文中,我们提出了一种自动启动方法低音来恢复对齐。它是一种无监督的一般普遍的方法,对目标网络和用户的最低限制,并且可用于真正的OSN。具体而言,我们共同模拟用户名,社交领带和用户生成的内容的用户常量,然后为参数学习采用EM算法。用于分析和评估,我们收集和发布涵盖各种类型的OSN和多语言情景的大规模数据集。我们进行广泛的实验来展示低音的表现,结论是我们的方法显着优于最先进的方法。

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