A comparative analysis of machine learning algorithms for hate speech detection in social media

Esraa Omran, Estabraq Al Tararwah, Jamal Al Qundus
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Abstract

A detecting and mitigating hate speech in social media, particularly on platforms like Twitter, is a crucial task with significant societal impact. This research study presents a comprehensive comparative analysis of machine learning algorithms for hate speech detection, with the primary goal of identifying an optimal algorithmic combination that is simple, easy to implement, efficient, and yields high detection performance. Through meticulous pre-processing and rigorous evaluation, the study explores various algorithms to determine their suitability for hate speech detection. The focus is finding a combination that balances simplicity, ease of implementation, computational efficiency, and strong performance metrics. The findings reveal that the combination of naïve Bayes and decision tree algorithms achieves a high accuracy of 0.887 and an F1-score of 0.885, demonstrating its effectiveness in hate speech detection. This research contributes to identifying a reliable algorithmic combination that meets the criteria of simplicity, ease of implementation, quick processing, and strong performance, providing valuable guidance for researchers and practitioners in hate speech detection in social media. By elucidating the strengths and limitations of various algorithmic combinations, this research enhances the understanding of hate speech detection. It paves the way for developing robust solutions, creating a safer, more inclusive digital environment.
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社交媒体中仇恨言论检测的机器学习算法的比较分析
A< b>发现和减轻社交媒体上的仇恨言论,特别是在Twitter等平台上,是一项具有重大社会影响的关键任务。本研究对用于仇恨言论检测的机器学习算法进行了全面的比较分析,其主要目标是确定一种简单,易于实现,高效且具有高检测性能的最佳算法组合。通过细致的预处理和严格的评估,本研究探索了各种算法,以确定它们对仇恨言论检测的适用性。重点是找到一种平衡简单性、易于实现、计算效率和强大性能指标的组合。研究结果表明,naïve贝叶斯与决策树算法的结合,准确率高达0.887,f1得分为0.885,证明了其在仇恨言论检测中的有效性。本研究有助于确定一种可靠的算法组合,满足简单、易于实现、处理速度快、性能强的标准,为社交媒体仇恨言论检测的研究人员和从业者提供有价值的指导。通过阐明各种算法组合的优势和局限性,本研究增强了对仇恨言论检测的理解。它为开发强大的解决方案铺平了道路,创造了一个更安全、更包容的数字环境。
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CiteScore
3.40
自引率
5.00%
发文量
40
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