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Ranking influencers of social networks by semantic kernels and sentiment information

机译:语义内核和情感信息排名社交网络的影响因素

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摘要

Inspired by the importance of social media, a Social Network Opinion Leaders (SNOL) system has been proposed in this paper. The purpose of this system is to identify topic-based opinion leaders of social media. In order to accomplish this goal, several steps have been taken, such as data collection, data processing, data analysis, data classification, ranking of topic-based opinion leaders, and evaluation. The SNOL system has two main parts. In the first part, collected tweets are classified by semantic kernels for topic-based analysis. In the second part, leadership scores are given to each user in the network according to topic modeling and user modeling results. Leadership scores are then calculated with the formula generated and opinion leaders are determined for each category. Experiments are performed on data gathered from Twitter including 17,234,924 tweets from 38,727 users. The evaluation of opinion leader detection is a difficult job since there is no standard method for identifying opinion leaders. Therefore, the evaluation of the results of this study has been done using two different methods, retweet count and spread score, to prove that the suggested methodology outperforms the PageRank algorithm. The results have also been evaluated considering the user-topic sentiment correlation of the retrieved lists. Furthermore, SNOL has been compared against some opinion leader detection methods previously presented in the literature. The experimental results show that SNOL generates remarkably higher performance than the PageRank algorithm and other existing algorithms in the literature for nearly all topics and all selected top N opinion leaders.
机译:通过社会媒体的重要性,在本文中提出了一个社交网络意见领导人(SNOL)系统。该系统的目的是确定社交媒体的基于主题的意见领导者。为了完成这一目标,已经采取了几个步骤,例如数据收集,数据处理,数据分析,数据分类,基于主题的意见领导者的排名和评估。 SNOL系统有两个主要部件。在第一部分中,收集的推文由语义内核为主题的分析分类。在第二部分中,根据主题建模和用户建模结果向网络中的每个用户提供领导分数。然后使用公式计算的领导评分,并确定每个类别的意见领导者。对从Twitter收集的数据进行实验,包括来自38,727个用户的17,234,924个推文。意见领导者检测的评估是一项艰巨的工作,因为没有识别意见领导者的标准方法。因此,对本研究结果的评估已经使用了两种不同的方法,转关计数和传播分数来完成,以证明建议的方法优于PageRank算法。考虑到检索到的列表的用户主题情感相关性也会评估结果。此外,已经将SnOL与先前在文献中呈现的某些意见领导者检测方法进行了比较。实验结果表明,SNOL比PageRank算法和文献中的其他现有算法产生显着更高的性能,以及几乎所有主题和所有选定的顶级N意见领导者。

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