Machine Learning Algorithms for Detecting and Analyzing Social Bots Using a Novel Dataset

IF 1.2 Q3 MULTIDISCIPLINARY SCIENCES ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY Pub Date : 2022-09-10 DOI:10.14500/aro.101032
Niyaz Jalal, K. Ghafoor
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引用次数: 7

Abstract

Social media is internet-based technology and an electronic form of communication that facilitates sharing of ideas, documents, and personal information. Twitter is a microblogging platform and is the most effective social service for posting microblogs and likings, commenting, sharing, and communicating with others. The problem we are shedding light on in this paper is the misuse of bots on Twitter. The purpose of bots is to automate specific repetitive tasks instead of human interaction. However, bots are misused to influence people’s minds by spreading rumors and conspiracy related to controversial topics. In this paper, we initiate a new benchmark created on a 1.5M Twitter profile. We train different supervised machine learning on our benchmark to detect bots on Twitter. In addition to increasing benchmark scalability, various autofeature selections are utilized to identify the most influential features and remove the less influential ones. Furthermore, over-under-sampling is applied to reduce the imbalance effect on the benchmark. Finally, our benchmark compared with other stateof-the-art benchmarks and achieved a 6% higher area under the curve than other datasets in the case of generalization, improving the model performance by at least 2% by applying over-/undersampling.
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使用新数据集检测和分析社交机器人的机器学习算法
社交媒体是一种基于互联网的技术,是一种促进思想、文件和个人信息共享的电子通信形式。Twitter是一个微博平台,是发布微博、点赞、评论、分享和与他人交流的最有效的社交服务。我们在这篇论文中揭示的问题是Twitter上机器人的滥用。机器人的目的是自动化特定的重复性任务,而不是人工交互。然而,机器人被滥用,通过传播与争议话题有关的谣言和阴谋来影响人们的思想。在本文中,我们启动了一个在150万Twitter个人资料上创建的新基准。我们在我们的基准上训练不同的监督机器学习来检测Twitter上的机器人。除了提高基准可伸缩性之外,还使用各种自动特征选择来识别最具影响力的特征并删除影响较小的特征。此外,还采用过欠采样的方法来减少不平衡对基准的影响。最后,我们的基准与其他最先进的基准进行比较,在泛化情况下,曲线下的面积比其他数据集高6%,通过应用过采样/欠采样将模型性能提高至少2%。
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来源期刊
ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY
ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY MULTIDISCIPLINARY SCIENCES-
自引率
33.30%
发文量
33
审稿时长
16 weeks
期刊最新文献
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