基于混合机器学习模型的社交网络恶意内容检测

D. N, G. N
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引用次数: 0

摘要

社交网络平台,如Facebook、Twitter、Reddit、微博、Instagram等,是最受欢迎和最容易使用的社交连接媒介,可以了解最新事件和新闻,在业余时间放松,分享对许多正在发生的事件的看法等。这些平台的使用量逐年大幅增长,比如9%到12%。截至2021年,使用社交媒体的人数占总人口的一半[1]。有了这么多的使用,如果网络中可用的所有信息都是真实的和信息丰富的,那么这是非常值得赞赏的,但有明确的证据表明,由于各种原因,恶意信息传播的可能性很高,这会对社会产生负面影响。因此,在社交网络中检测这类内容是一个非常重要的研究领域。在过去的许多年里,研究人员已经提出了不同的想法来利用数据挖掘、机器学习和深度学习技术来识别这类信息。在本文中,我们提出了一种混合方法HCSTCM(基于情感的混合聚类主题分类模型),通过推导文档的聚类、情感和主题信息来识别社交网络中的恶意内容,然后将这些特征用于监督学习。本文的主要目的是在没有冗余的情况下识别影响恶意内容的最依赖特征,并提高分类精度。该方法通过三个社交平台数据进行了验证。
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MALICIOUS CONTENT DETECTION IN SOCIAL NETWORKS USING HYBRID MACHINE LEARNING MODEL
Social Networking platforms like Facebook, Twitter, Reddit, Weibo, Instagram and many more are the most popular and very easy to use medium for social connectivity, staying up to date with current events and news, relaxing in spare time, sharing opinions on many occurring events etc., Usage of these platforms have tremendously increased year over year say 9 to 12%. As of 2021 half of the percentage of people are using social media out of entire population [1]. With this much usage, if the entire information available in the Network is real and informative then it is really appreciated, but there is clear evidence that there are high chances of dissemination of malicious information for variety of reasons which creates negative impact on the society. So, detecting this type of content in the Social Network is very important research area. From past many years researchers have come up with different ideas to identify this type of information with Data Mining, Machine Learning, Deep Learning techniques. In this paper we propose a hybrid approach HCSTCM (Hybrid Cluster derived Sentiment based Topic Classification Model) to identify malicious content in the Social Network by deriving clusters, sentiments and topic information of the documents, later on using these features for supervised learning. Main aim of the paper is to identify the most dependent features which effect the malicious content without redundancy and improve the classification accuracy. The proposed method is validated with three social platform data.
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来源期刊
Indian Journal of Computer Science and Engineering
Indian Journal of Computer Science and Engineering Engineering-Engineering (miscellaneous)
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0.00%
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