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Finding Temporal Influential Users in Social Media Using Association Rule Learning

机译:使用关联规则学习在社交媒体中找到时间上有影响力的用户

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摘要

The social media has become an integral part of our daily life. The social web users interact and thus influence each other influence in many aspects. Blogging is one of the most important features of the social web. The bloggers share their views, opinions and ideas in the form of blog posts. The influential bloggers are the leading bloggers who influence the other bloggers in their online communities. The relevant literature presents several studies related to identification of top influential bloggers in last decade. The research domain of finding the top influential bloggers mainly focuses on feature centric models. This research study proposes to apply association rule learning for finding the temporal influential bloggers. The widely used Apriori algorithm is applied using Oracle data miner to find the frequent pattern of bloggers having blog activities together and then we find who influences others based on the rules learned from the association rule mining. The use of standard evaluation measures such as accuracy, precision and F1 score verifies the results. This research study uses the standard dataset of TechCrunch which is a real world blog. The results confirm that the association rule mining can produce rules which help to find the temporal influential bloggers in the blogosphere who are consistent on regular basis. The proposed method achieved accuracy as high as 98% for confidence level of 90%. The identification of the top influential bloggers has enormous applications in advertising, online marketing, e-commerce, promoting a political agenda, influencing elections and affect the government policies.
机译:社交媒体已成为我们日常生活不可或缺的一部分。社交网络用户进行交互并因此在许多方面相互影响。博客是社交网络的最重要功能之一。博客作者以博客文章的形式分享他们的观点,观点和想法。有影响力的博客作者是影响其在线社区中其他博客作者的领先博客作者。相关文献提出了与识别过去十年中最有影响力的博客作者有关的几项研究。寻找最有影响力的博客作者的研究领域主要集中在以功能为中心的模型上。这项研究建议将关联规则学习应用于发现对时间有影响力的博客作者。使用Oracle数据挖掘器应用了广泛使用的Apriori算法,以发现经常有博客活动的博客作者的频繁模式,然后根据从关联规则挖掘中获悉的规则,找出谁会影响其他人。使用诸如准确性,准确性和F1分数之类的标准评估方法可以验证结果。本研究使用TechCrunch的标准数据集,这是一个真实世界的博客。结果证实,关联规则挖掘可以产生规则,以帮助找到在Blog圈中具有时间规律性且在时间上保持一致的博客作者。所提出的方法对于90%的置信度达到了98%的精度。确定最有影响力的博客作者在广告,在线营销,电子商务,促进政治议程,影响选举和影响政府政策方面具有广泛的应用。

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