推断病毒式营销中跨社交网络的社交关系

Tsung-Hao Hsu, Meng-Fen Chiang, Wen-Chih Peng
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引用次数: 0

摘要

社交网络中的节点分类是近年来被广泛研究的一个重要问题。现有的几种节点分类方法主要是利用结构信息和属性信息来识别节点类别。然而,新兴信息网络中的信息通常是有限的。例如,新兴的社交网络服务通常只有很少的注册用户(称为活跃用户)和大量的新用户(称为非活跃用户),从而导致活跃用户之间的交互非常稀疏。在这种情况下,区分未来可能成为活跃用户的用户和大规模的新用户变得很有挑战性。在本文中,我们提出了一种混合分类模型,该模型通过统一的排序度量,结合多种关系,可以区分非活跃用户将来是否会成为活跃用户。更具体地说,给定一个友谊网络和一个移动通信网络,我们的目标是从大量的非活跃用户中发现一个可能在未来成为活跃用户的用户列表。我们报告了一些来自真实数据集的经验观察结果,并进行了广泛的实验来证明我们的混合分类模型和排名策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inferring Social Relationships across Social Networks for Viral Marketing
Node classification in social networks is an important problem that has been widely studied in recent years. Several existing node classification methods mainly focus on identifying node classes by exploiting structural and attribute information. However, the information in an emerging information network is usually limited. For example, an emerging social networking service usually has very few registered users (referred to as active users) and a significant amount of new comers (referred to as non-active users) resulting in very sparse interactions among active users. Under this circumstances, distinguishing the users that is likely to be an active user in the future from large-scale new comers becomes challenging. In this paper, we propose a hybrid classification model, which can distinguish whether a non-active user will become an active user in the future by incorporating multiple relations through a unified ranking measure. More specifically, given a friendship network and a mobile communication network, we aim to discover a ranked list of users, who are likely to become active users in the future, from a massive amount of non-active users. We reported several empirical observations from real data sets and conducted extensive experiments to demonstrate the effectiveness of our hybrid classification model and ranking strategy.
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