Feature Selection and Performance Evaluation of Buzzer Classification Model

Dian Isnaeni Nurul Afra, Radhiyatul Fajri, Harnum Annisa Prafitia, Ikhwan Arief, Aprinaldi Jasa Mantau
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Abstract

In the rapidly evolving digital age, social media platforms have transformed into battleground for shaping public opinion. Among these platforms, X has been particularly susceptible to the phenomenon of 'buzzers', paid or coordinated actors who manipulate online discussions and influence public sentiment. This manipulation poses significant challenges for users, researchers, and policymakers alike, necessitating robust detection measures and strategic feature selection for accurate classification models. This research explores the utilization of various feature selection techniques to identify the most influential features among the 24 features employed in the classification modeling using Support Vector Machine. This study found that selecting 11 key features yields a remarkably effective classification model, achieving an impressive F1-score of 87.54 in distinguishing between buzzer and non-buzzer accounts. These results suggest that focusing on the relevant features can improve the accuracy and efficiency of buzzer detection models. By providing a more robust and adaptable solution to buzzer detection, our research has the potential to advance social media research and policy. This enabling researchers and policymakers to devise strategies aimed at mitigating misinformation dissemination and cultivating an environment of trust and integrity within social media platforms, thus fostering healthier online interactions and discourse.
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蜂鸣器分类模型的特征选择和性能评估
在飞速发展的数字时代,社交媒体平台已成为影响公众舆论的战场。在这些平台中,X 平台尤其容易受到 "buzzers "现象的影响。"buzzers "是指操纵在线讨论并影响公众情绪的有偿或协同行为者。这种操纵行为给用户、研究人员和政策制定者都带来了巨大的挑战,因此需要强有力的检测措施和策略性特征选择来建立准确的分类模型。本研究探讨了如何利用各种特征选择技术,在使用支持向量机进行分类建模的 24 个特征中找出最有影响力的特征。本研究发现,选择 11 个关键特征可产生一个非常有效的分类模型,在区分蜂鸣器和非蜂鸣器账户方面取得了 87.54 的惊人 F1 分数。这些结果表明,专注于相关特征可以提高蜂鸣器检测模型的准确性和效率。我们的研究为蜂鸣器检测提供了一种更稳健、适应性更强的解决方案,有望推动社交媒体研究和政策的制定。这使研究人员和政策制定者能够制定战略,以减少错误信息的传播,并在社交媒体平台内培养信任和诚信的环境,从而促进更健康的在线互动和讨论。
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