What Will Be Popular Next? Predicting Hotspots in Two-mode Social Networks

Zhepeng Li, Yong Ge, Xue Bai
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引用次数: 2

Abstract

In social networks, social foci are physical or virtual entities around which social individuals organize joint activities, for example, places and products (physical form) or opinions and services (virtual form). Forecasting which social foci will diffuse to more social individuals is important for managerial functions such as marketing and public management operations. Considering diffusive social adoptions, prior studies on user adoptive behavior in social networks have focused on single-item adoption in homogeneous networks. We advance this body of research by modeling scenarios with multi-item adoption and learning the relative propagation of social foci in concurrent social diffusions for online social networking platforms. To be specific, we distinguish two types of social nodes in our two-mode social network model: social foci and social actors. Based on social network theories, we identify and operationalize factors that drive social adoption within the two-mode social network. We also capture the interdependencies between social actors and social foci using a bilateral recursive process, specifically, a mutual reinforcement process that converges to an analytical form. Thus, we develop a gradient learning method based on mutual reinforcement process (GLMR) that targets the optimal parameter configuration for pairwise ranking of social diffusions. Further, we demonstrate analytical properties of the proposed method such as guaranteed convergence and the convergence rate. In the evaluation, we benchmark the proposed method against prevalent methods, and we demonstrate its superior performance using three real-world data sets that cover adoption of both physical and virtual entities in online social networking platforms.
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接下来会流行什么?双模式社会网络热点预测
在社会网络中,社会焦点是社会个体围绕其组织联合活动的物理或虚拟实体,例如地点和产品(物理形式)或意见和服务(虚拟形式)。预测哪些社会焦点将扩散到更多的社会个体,对于营销和公共管理业务等管理职能非常重要。考虑到社交网络的扩散性,以往关于社交网络中用户采用行为的研究主要集中在同质网络中的单项采用。我们通过建模多项目采用的场景,并学习在线社交网络平台的并发社交扩散中社会焦点的相对传播来推进这一研究。具体来说,我们在双模式社会网络模型中区分了两种类型的社会节点:社会焦点和社会行动者。基于社会网络理论,我们识别和操作驱动社会采用在双模式社会网络的因素。我们还使用双边递归过程捕捉社会行动者和社会焦点之间的相互依赖关系,具体来说,是一个相互强化的过程,收敛为分析形式。因此,我们开发了一种基于相互强化过程(GLMR)的梯度学习方法,目标是对社会扩散进行两两排序的最佳参数配置。进一步证明了该方法具有保证收敛性和收敛速率等解析性质。在评估中,我们将所提出的方法与流行方法进行了基准测试,并使用三个真实世界的数据集证明了其优越的性能,这些数据集涵盖了在线社交网络平台中物理和虚拟实体的采用。
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