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Spreading social influence with both positive and negative opinions in online networks

机译:在在线网络中以正面和负面的观点传播社会影响

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Spreading social influence with both positive and negative opinions in online networks Social networks are important media for spreading information, ideas, and influence among individuals. Most existing research focuses on understanding the characteristics of social networks, investigating how information is spread through the "word-of-mouth" effect of social networks, or exploring social influences among individuals and groups. However, most studies ignore negative influences among individuals and groups. Motivated by the goal of alleviating social problems, such as drinking, smoking, and gambling, and influence-spreading problems, such as promoting new products, we consider positive and negative influences, and propose a new optimization problem called the Minimum-sized Positive Influential Node Set (MPINS) selection problem to identify the minimum set of influential nodes such that every node in the network can be positively influenced by these selected nodes with no less than a threshold of θ. Our contributions are threefold. First, we prove that, under the independent cascade model considering positive and negative influences, MPINS is APX-hard. Subsequently, we present a greedy approximation algorithm to address the MPINS selection problem. Finally, to validate the proposed greedy algorithm, we conduct extensive simulations and experiments on random graphs and seven different realworld data sets that represent small-, medium-, and large-scale networks.
机译:在在线网络中以正面和负面的观点传播社会影响力社会网络是在个人之间传播信息,思想和影响力的重要媒体。现有的大多数研究都集中在理解社交网络的特征,研究如何通过社交网络的“口碑”效应传播信息,或探索个人和群体之间的社会影响。但是,大多数研究忽略了个人和群体之间的负面影响。出于减轻诸如饮酒,吸烟和赌博等社会问题以及推广新产品等影响力传播问题的目标,我们考虑了正面和负面影响,并提出了一个新的优化问题,即最小规模正面影响节点集(MPINS)选择问题,用于确定影响节点的最小集合,以使网络中的每个节点都可以受到这些所选节点的积极影响,且阈值不得小于θ。我们的贡献是三倍。首先,我们证明,在考虑正面和负面影响的独立级联模型下,MPINS是APX难题。随后,我们提出了一种贪婪近似算法来解决MPINS选择问题。最后,为了验证所提出的贪婪算法,我们在随机图和代表小,中和大型网络的七个不同的现实世界数据集上进行了广泛的仿真和实验。

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