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PIB: Profiling Influential Blogger in Online Social Networks, A Knowledge Driven Data Mining Approach

机译:PIB:在线社交网络中有影响力的Blogger分析,这是一种知识驱动的数据挖掘方法

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Online Social Networks (OSNs) facilitate to create and spread information easily and rapidly, influencing others to participate and propagandize. This work proposes a novel method of profiling Influential Blogger (IB) based on the activities performed on one's blog documents who influences various other bloggers in Social Blog Network (SBN). After constructing a social blogging site, a SBN is analyzed with appropriate parameters to get the Influential Blog Power (IBP) of each blogger in the network and demonstrate that profiling IB is adequate and accurate. The proposed Profiling Influential Blogger (PIB) Algorithm survival rate of IB is high and stable.
机译:在线社交网络(OSN)有助于轻松快速地创建和传播信息,从而影响其他人的参与和宣传。这项工作提出了一种新颖的方法,可以根据对影响社交博客网络(SBN)中其他博客作者的博客文档执行的活动来分析有影响力的博客(IB)。构建社交博客网站后,将使用适当的参数对SBN进行分析,以获取网络中每个博客的影响力Blog Power(IBP),并证明对IB进行概要分析是足够且准确的。提出的IB的概要分析有影响力的Blogger(PIB)算法生存率很高且稳定。

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