Sentiment Analysis Regarding Candidate Presidential 2024 Using Support Vector Machine Backpropagation Based

Atmaja Jalu Narendra Kisma, Primandani Arsi, Pungkas Subarkah
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Abstract

This research has the potential to make an important contribution to the development of computationally-based sentiment analysis, particularly in the political context. Anies Baswedan, Ganjar Pranowo, and Prabowo Subianto, three candidates for the presidency of Indonesia, are examined using a Backpropagation-based Support Vector Machine (SVM) methodology in this study. This approach is used to categorize emotions into three groups: neutral, adverse, and favorable. Between July 1 and July 30, 2023, data on tweets mentioning the three presidential contenders was gathered. After processing the data, SVM was used while lowering the backpropagation process. The study's findings demonstrate that the performance of the model in determining public sentiment is greatly enhanced by the application of backpropagation-based SVM techniques. For each presidential contender, the evaluation was conducted using the f1 score, recall, and precision metrics. The evaluation's findings indicate that while the model struggles to distinguish between favorable and negative feelings toward particular presidential contenders, it performs better when categorizing neutral feelings. The SVM model is more accurately able to identify popular sentiment toward the three presidential candidates when the backpropagation approach is used. The results of the sentiment analysis are also represented by word clouds for each presidential contender, giving an intuitive sense of the words that are frequently used in public discourse. This study sheds light on the possibilities of using Twitter data to analyze political sentiment using the backpropagation-based SVM algorithm. 
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使用基于支持向量机的反向传播对 2024 年总统候选人进行情感分析
这项研究有望为基于计算的情感分析的发展做出重要贡献,尤其是在政治领域。本研究使用基于反向传播的支持向量机(SVM)方法对印度尼西亚总统候选人阿尼斯-巴斯韦丹、甘贾尔-普拉诺沃和普拉博沃-苏比安托进行了研究。该方法用于将情绪分为三类:中性、不利和有利。在 2023 年 7 月 1 日至 7 月 30 日期间,收集了提及三位总统竞选人的推文数据。在处理数据后,使用了 SVM,同时降低了反向传播过程。研究结果表明,基于反向传播的 SVM 技术的应用大大提高了模型在判断公众情绪方面的性能。对于每一位总统竞选人,都使用 f1 分数、召回率和精确度指标进行了评估。评估结果表明,虽然该模型难以区分对特定总统竞选人的好感和负面情绪,但在对中性情绪进行分类时表现较好。在使用反向传播方法时,SVM 模型能更准确地识别民众对三位总统候选人的情感。情感分析的结果也通过每个总统竞选人的词云表现出来,让人直观地感受到公共话语中经常使用的词汇。本研究揭示了使用基于反向传播的 SVM 算法利用 Twitter 数据分析政治情感的可能性。
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