Friendship Prediction on Social Network Users

Kuan-Hsi Chen, Tyne Liang
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引用次数: 6

Abstract

Undoubtedly friendship is one of key factors which keep social networking service users active and the whole community expanding. Hence, predicting friendships becomes an indispensable service provided by the platforms like Plurk, Twitter and Facebook. In this study, an empirical prediction resolution is presented by taking into account the interactions among Plurk users in Taiwan. Both response links and content information extracted from the interaction corpus are used as features in the implementation of the vector space machine based prediction. Experimental results show that the presented approach outperforms those bag-of-word based methods presented in previous studies.
社交网络用户的友谊预测
毫无疑问,友谊是保持社交网络服务用户活跃和整个社区扩展的关键因素之一。因此,预测友谊成为Plurk、Twitter和Facebook等平台提供的一项不可或缺的服务。本研究以台湾地区Plurk使用者互动为研究对象,提出实证预测的解决方案。从交互语料库中提取的响应链接和内容信息作为特征用于实现基于向量空间机的预测。实验结果表明,该方法优于以往的基于词袋的方法。
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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