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Retrieving the maximal time-bounded positive influence set from social networks

机译:从社交网络中获取最大的有时限积极影响

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摘要

The appearance of social networks provides great opportunities for people to communicate, share and disseminate information. Meanwhile, it is quite challenge for utilizing a social networks efficiently in order to increase the commercial profit or alleviate social problems. One feasible solution is to select a subset of individuals that can positively influence the maximum other ones in the given social network, and some algorithms have been proposed to solve the optimal individual subset selection problem. However, most of the existing works ignored the constraint on time. They assume that the time is either infinite or only suitable to solve the snapshot selection problems. Obviously, both of them are impractical in the real system. Due to such reason, we study the problem of selecting the optimal individual subset to diffuse the positive influence when time is bounded. We proved that such a problem is NP-hard, and a heuristic algorithm based on greedy strategy is proposed. The experimental results on both simulation and real-world social networks based on the trace data in Shanghai show that our proposed algorithm outperforms the existing algorithms significantly, especially when the network structure is sparse.
机译:社交网络的出现为人们提供了交流,共享和传播信息的绝佳机会。同时,有效利用社交网络以增加商业利润或减轻社会问题是相当大的挑战。一种可行的解决方案是选择一个可以对给定社交网络中的其他个体产生最大影响的个体子集,并且已经提出了一些算法来解决最优个体子集选择问题。但是,大多数现有工作都忽略了时间限制。他们认为时间是无限的,或者仅适合解决快照选择问题。显然,它们在实际系统中都是不切实际的。由于这种原因,我们研究了在时间有限的情况下选择最佳个体子集以扩散积极影响的问题。我们证明了这种问题是NP难的,并提出了一种基于贪婪策略的启发式算法。基于上海的跟踪数据,在模拟和现实世界社交网络上的实验结果表明,我们提出的算法明显优于现有算法,尤其是在网络结构稀疏的情况下。

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