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Mining Opinion Leaders in Big Social Network

机译:大型社交网络中的意见领袖

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摘要

Recently, due to the popularity of Web 2.0, considerable attention has been paid to the opinion leader discovery in social network. By identifying the opinion leaders, companies or governments can manipulate the selling or guiding public opinion, respectively. Additionally, detecting the influential comments is able to understand the source and trend of public opinion formation. However, mining opinion leaders in a huge social network is a challenge task because of the complexity of graph processing and leadership analysis. In this study, a novel algorithm, OLMiner, is proposed to efficiently find the opinion leaders from a huge social network. We propose a clustering method to solve the influence overlapping issue and significantly reduce the computation time by shrinking the size of candidate generation. The experimental results show that the proposed OLMiner can effectively discover the influential opinion leaders in different real social networks with efficiency.
机译:近年来,由于Web 2.0的普及,社交网络中的意见领袖发现受到了相当大的关注。通过确定意见领袖,公司或政府可以分别操纵出售或指导公众意见。此外,检测有影响力的评论能够理解民意形成的来源和趋势。但是,由于图形处理和领导力分析的复杂性,在庞大的社交网络中挖掘意见领袖是一项艰巨的任务。在这项研究中,提出了一种新颖的算法OLMiner,可以有效地从庞大的社交网络中找到意见领袖。我们提出了一种聚类方法来解决影响重叠的问题,并通过缩小候选代的大小来显着减少计算时间。实验结果表明,提出的OLMiner可以有效地发现不同现实社交网络中有影响力的舆论领袖。

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