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Detect potential relations by link prediction in multi-relational social networks

机译:通过多关系社交网络中的链接预测来检测潜在关系

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Potential relation detecting on social network has become more important for decision making in many business disciplines, such as marketing, business strategy, human resources development, finance planning, business transformation, insurance policy design, and tourism management. People are used to seeking useful information from the relationships among social members to support their decisions on investment, partner seeking and marketing. Corporations are seeking opportunities to leverage them for "word of mouth" advertising based on the relations between the customers. When we collect and observe relationships between people, missing or redundant relations unavoidably occur since the time and cost restrictions in market or social investigation prevent us to discover all the relations. Moreover, since the social relations are changing constantly, current social relations may disappear, and new relations will be established. Many trade and social networks consist of multiple types of relations between the individuals. This paper presents an efficient method to detect the potential and future social relations between individuals in multi-relational social networks using link prediction. First, we calculate the belief of each individual by belief propagation on each type of relations. Based on the belief vectors, the similarities between various types of relations are computed to measure their mutual influence. Based on the similarities between various types of relations, we model link prediction as the problem of matrix completion by optimizing its max-norm constrained formulation. We propose a projected gradient descent optimization algorithm which is scalable to large size networks. Empirical results on real multi-relational social networks demonstrate that the predicting results of our algorithm have higher quality compared with other similar algorithms.
机译:社交网络上的潜在关系检测对于许多业务学科(例如市场营销,业务战略,人力资源开发,财务规划,业务转型,保险政策设计和旅游管理)中的决策已变得越来越重要。人们习惯于从社会成员之间的关系中寻找有用的信息,以支持他们在投资,寻找合作伙伴和营销方面的决定。公司正在寻找机会,根据客户之间的关系,将其用于“口碑”广告。当我们收集和观察人与人之间的关系时,由于市场或社会调查的时间和成本限制使我们无法发现所有关系,因此不可避免地会发生缺失或冗余的关系。此外,由于社会关系在不断变化,因此当前的社会关系可能会消失,而新的关系将会建立。许多贸易和社会网络由个人之间的多种类型的关系组成。本文提出了一种使用链接预测来检测多关系社交网络中个体之间潜在和未来社会关系的有效方法。首先,我们通过对每种关系的信念传播来计算每个人的信念。基于信念向量,计算各种类型关系之间的相似度以衡量它们之间的相互影响。基于各种关系之间的相似性,我们通过优化其最大范数约束公式,将链接预测建模为矩阵完成问题。我们提出了一种投影梯度下降优化算法,该算法可扩展到大型网络。真实的多关系社交网络的经验结果表明,与其他类似算法相比,我们的算法的预测结果具有更高的质量。

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