Truculent Post Analysis for Hindi Text

Mitali Agarwal, Poorvi Sahu, Nisha Singh, Jasleen, Puneet Sinha, Rahul Kumar Singh
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Abstract

INTRODUCTION: With the rise of social media platforms, the prevalence of truculent posts has become a major concern. These posts, which exhibit anger, aggression, or rudeness, not only foster a hostile environment but also have the potential to stir up harm and violence. OBJECTIVES: It is essential to create efficient algorithms for detecting virulent posts so that they can recognise and delete such content from social media sites automatically. In order to improve accuracy and efficiency, this study evaluates the state-of-the-art in truculent post detection techniques and suggests a unique method that combines deep learning and natural language processing. The major goal of the proposed methodology is to successfully regulate hostile social media posts by keeping an eye on them. METHODS: In order to effectively identify the class labels and create a deep-learning method, we concentrated on comprehending the negation words, sarcasm, and irony using the LSTM model. We used multilingual BERT to produce precise word embedding and deliver semantic data. The phrases were also thoroughly tokenized, taking into consideration the Hindi language, thanks to the assistance of the Indic NLP library. RESULTS:  The F1 scores for the various classes are given in the "Proposed approach” as follows: 84.22 for non-hostile, 49.26 for hostile, 68.69 for hatred, 49.81 for fake, and 39.92 for offensive CONCLUSION: We focused on understanding the negation words, sarcasm and irony using the LSTM model, to classify the class labels accurately and build a deep-learning strategy.
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针对印地语文本的 Truculent Post 分析
引言:随着社交媒体平台的兴起,辱骂性帖子的盛行已成为人们关注的焦点。这些帖子表现出愤怒、攻击性或粗鲁无礼,不仅助长了敌对环境,还有可能引发伤害和暴力。目标: 必须创建高效的算法来检测恶意帖子,以便自动识别和删除社交媒体网站上的此类内容。为了提高准确性和效率,本研究评估了最先进的恶意帖子检测技术,并提出了一种结合深度学习和自然语言处理的独特方法。所提方法的主要目标是通过密切关注恶意社交媒体帖子,成功对其进行监管。方法:为了有效识别类标签并创建深度学习方法,我们使用 LSTM 模型专注于理解否定词、讽刺和反讽。我们使用多语言 BERT 生成精确的词嵌入并提供语义数据。在 Indic NLP 库的帮助下,考虑到印地语的特点,我们还对短语进行了彻底的标记化处理。结果:"建议的方法 "中给出了不同类别的 F1 分数如下:非敌意为 84.22,敌意为 49.26,仇恨为 68.69,虚假为 49.81,冒犯为 39.92 结论:我们使用 LSTM 模型重点理解了否定词、讽刺和挖苦,从而准确地对类别标签进行分类,并构建了一种深度学习策略。
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