Sentiment Analysis in Indian Elections: Unraveling Public Perception of the Karnataka Elections With Transformers

Pranav Gunhal
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Abstract

This study explores the utility of sentiment classification in political decision-making through an analysis of Twitter sentiment surrounding the 2023 Karnataka elections. Utilizing transformer-based models for sentiment analysis in Indic languages, the research employs innovative data collection methodologies, including novel data augmentation techniques. The primary focus is on sentiment classification, discerning positive, negative, and neutral posts, particularly regarding the defeat of the Bharatiya JanataParty (BJP) or the victory of the Indian National Congress (INC). Leveraging high-performing transformer architectures like IndicBERT, coupled with precise hyper parameter tuning, the AI models used in this study exhibit exceptional predictive accuracy, notably predicting the INC's electoral success. These findings underscore the potential of state-of-the-art transformer-based models in capturing and understanding sentiment dynamics within Indian politics. Implications are far-reaching, providing invaluable insights for political stakeholders preparing for the 2024 Lok Sabha elections. This study stands as a testament to the potential of sentiment analysis as a pivotal tool in political decision-making, specifically in non-Western nations.
印度选举中的情绪分析:用变形金刚揭示卡纳塔克邦选举的公众认知
本研究通过分析围绕2023年卡纳塔克邦选举的Twitter情绪,探讨了情绪分类在政治决策中的效用。该研究利用基于转换器的模型进行印度语情感分析,采用创新的数据收集方法,包括新的数据增强技术。主要关注的是情绪分类,辨别积极、消极和中立的帖子,特别是关于印度人民党(BJP)的失败或印度国民大会党(INC)的胜利。利用IndicBERT等高性能变压器架构,加上精确的超参数调整,本研究中使用的人工智能模型表现出卓越的预测准确性,特别是预测INC的选举成功。这些发现强调了最先进的基于变压器的模型在捕捉和理解印度政治中的情绪动态方面的潜力。影响深远,为准备2024年人民院选举的政治利益攸关方提供了宝贵的见解。这项研究证明了情绪分析作为政治决策的关键工具的潜力,特别是在非西方国家。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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