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LAPSO-IM: A learning-based influence maximization approach for social networks

机译:LAPSO-IM:基于学习的社交网络影响最大化方法

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Online social networks play a pivotal role in the propagation of information and influence as in the form of word-of-mouth spreading. Influence maximization (IM) is a fundamental problem to identify a small set of individuals, which have maximal influence spread in the social network. IM problem is unfortunately NP-hard. It has been depicted that hill-climbing greedy approach gives a good approximation guarantee. However, it is inefficient to run a greedy approach on large-scale social networks. In this paper, a local influence evaluation function is presented for optimizing IM problem. The local influence evaluation function provides a reliable expected diffusion value of influence spread under the linear threshold, independent and weighted cascade models. To optimize local influence evaluation function, a learning automata based discrete particle swarm optimization (LAPSO-IM) algorithm is proposed. LAPSO-IM redefines the update rule of particle's velocity based on learning automata action to overcome the weakness of premature convergence. The experimental results on six real-world social networks show that the proposed algorithm is more effective than base algorithm DPSO with same the level of efficiency and more time-efficient than IMLA with approximate influence spread. (C) 2019 Elsevier B.V. All rights reserved.
机译:在线社交网络在信息传播中发挥关键作用,并以口交词传播形式的影响。影响最大化(IM)是识别一小组人的基本问题,这些问题具有最大的影响在社交网络中。不幸的是,我的问题很难。已经描绘出山攀爬贪婪的方法提供了良好的近似保证。然而,在大规模社交网络上运行贪婪的方法效率低下。本文介绍了局部影响评估功能以优化IM问题。局部影响评估函数提供了在线性阈值,独立和加权级联模型下的影响的可靠预期扩散值。为了优化局部影响评估功能,提出了一种基于学习的自由粒子群优化(LAPSO-IM)算法。 LAPSO-IM根据学习自动机构的作用重新定义粒子速度的更新规则,以克服早产融合的弱点。六个真实社交网络上的实验结果表明,该算法比基本算法DPSO更有效,具有与具有近似影响扩散的IMLA相同的效率水平和时间效率。 (c)2019年Elsevier B.V.保留所有权利。

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