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Finding top-k influential users in social networks under the structural diversity model

机译:在结构多样性模型下寻找社交网络中前k位有影响力的用户

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The influence maximization problem in a large-scale social network is to identify a few influential users such that their influence on the other users in the network is maximized, under a given influence propagation model. One common assumption adopted by two popular influence propagation models is that a user is more likely to be influenced if more his/her friends have already been influenced. This assumption recently however was challenged to be over simplified and inaccurate, as influence propagation process typically is much more complex than that, and the social decision of a user depends more subtly on the network structure, rather than how many his/her influenced friends. Instead, it has been shown that a user is very likely to be influenced by structural diversities of his/her friends. In this paper, we first formulate a novel influence maximization problem under this new structural diversity model. We then propose a constant approximation algorithm for the problem. We finally evaluate the effectiveness of the proposed algorithm by extensive experimental simulations, using different real datasets. Experimental results show that the users identified from a social network by the proposed algorithm have much larger influence than that found by existing algorithms. (C) 2016 Elsevier Inc. All rights reserved.
机译:大型社交网络中的影响最大化问题是在给定的影响力传播模型下,识别一些有影响力的用户,以使他们对网络中其他用户的影响最大化。两种流行的影响力传播模型采用的一个常见假设是,如果更多的朋友已经受到影响,则用户更有可能受到影响。然而,由于影响传播过程通常比该过程复杂得多,并且用户的社交决策更多地取决于网络结构,而不是取决于他/她影响了多少朋友,因此最近的这一假设面临着过于简化和不准确的挑战。相反,已经表明,用户很可能受到他/她朋友的结构多样性的影响。在本文中,我们首先在这种新的结构多样性模型下提出了一个新的影响最大化问题。然后,我们针对该问题提出了一种常数近似算法。最后,我们使用不同的真实数据集,通过广泛的实验仿真来评估所提出算法的有效性。实验结果表明,与现有算法相比,该算法从社交网络中识别出的用户具有更大的影响力。 (C)2016 Elsevier Inc.保留所有权利。

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