Modeling information diffusion and community membership using stochastic optimization

Alireza Hajibagheri, A. Hamzeh, G. Sukthankar
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引用次数: 22

Abstract

Communities are vehicles for efficiently disseminating news, rumors, and opinions in human social networks. Modeling information diffusion through a network can enable us to reach a superior functional understanding of the effect of network structures such as communities on information propagation. The intrinsic assumption is that form follows function-rational actors exercise social choice mechanisms to join communities that best serve their information needs. Particle Swarm Optimization (PSO) was originally designed to simulate aggregate social behavior; our proposed diffusion model, PSODM (Particle Swarm Optimization Diffusion Model) models information flow in a network by creating particle swarms for local network neighborhoods that optimize a continuous version of Holland's hyperplane-defined objective functions. In this paper, we show how our approach differs from prior modeling work in the area and demonstrate that it outperforms existing model-based community detection methods on several social network datasets.
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基于随机优化的信息扩散和社区成员建模
社区是人类社会网络中有效传播新闻、谣言和观点的工具。通过网络对信息扩散进行建模,可以使我们对社区等网络结构对信息传播的影响有更好的功能性理解。其内在假设是,形式遵循功能——理性行为者运用社会选择机制,加入最能满足其信息需求的社区。粒子群优化算法(PSO)最初是为了模拟群体社会行为而设计的;我们提出的扩散模型PSODM(粒子群优化扩散模型)通过为局部网络邻域创建粒子群来模拟网络中的信息流,从而优化Holland的超平面定义目标函数的连续版本。在本文中,我们展示了我们的方法与该领域先前的建模工作的不同之处,并证明它在几个社交网络数据集上优于现有的基于模型的社区检测方法。
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