Predicting Adoption Probabilities in Social Networks

Xiao Fang, P. H. Hu, Zhepeng Li, Weiyu Tsai
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引用次数: 146

Abstract

In a social network, adoption probability refers to the probability that a social entity will adopt a product, service, or opinion in the foreseeable future. Such probabilities are central to fundamental issues in social network analysis, including the influence maximization problem. In practice, adoption probabilities have significant implications for applications ranging from social network-based target marketing to political campaigns, yet predicting adoption probabilities has not received sufficient research attention. Building on relevant social network theories, we identify and operationalize key factors that affect adoption decisions: social influence, structural equivalence, entity similarity, and confounding factors. We then develop the locally weighted expectation-maximization method for Naive Bayesian learning to predict adoption probabilities on the basis of these factors. The principal challenge addressed in this study is how to predict adoption probabilities in the presence of confounding factors that are generally unobserved. Using data from two large-scale social networks, we demonstrate the effectiveness of the proposed method. The empirical results also suggest that cascade methods primarily using social influence to predict adoption probabilities offer limited predictive power and that confounding factors are critical to adoption probability predictions.
预测社会网络的采用概率
在社会网络中,采用概率是指社会实体在可预见的未来采用某种产品、服务或意见的概率。这些概率是社会网络分析中基本问题的核心,包括影响最大化问题。在实践中,从基于社交网络的目标营销到政治竞选,采用概率对应用有着重要的影响,然而预测采用概率还没有得到足够的研究关注。在相关社会网络理论的基础上,我们确定并操作影响收养决策的关键因素:社会影响、结构等效、实体相似性和混杂因素。然后,我们开发了朴素贝叶斯学习的局部加权期望最大化方法,以预测基于这些因素的采用概率。本研究解决的主要挑战是如何在通常未观察到的混杂因素存在的情况下预测采用概率。使用两个大型社交网络的数据,我们证明了所提出方法的有效性。实证结果还表明,主要利用社会影响来预测采用概率的级联方法的预测能力有限,混杂因素对采用概率的预测至关重要。
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