Sentiment Analysis of Law Enforcement Performance Using Support Vector Machine and K-Nearest Neighbor

Sean Semuel Istia, H. Purnomo
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引用次数: 18

Abstract

Sentiment analysis or opinion mining is a method to group opinions or reviews into positive or negative. It is important sources for decision making and can be extracted, identified as well as evaluated from online sentiments reviews. This research discussed sentiment analysis in law enforcement on a law case in Indonesia. The analysis uses Support Vector Machine and K-Nearest Neighbor (KNN) for data classification integrated with Particle Swam Optimization (PSO) to increase their performance. The experiment results show that PSO increase the performance of both algorithmof the paper is PSO method make value SVM with PSO where value C = 1.0 and Epsilon = 1.0 accuracy 100% while for algorithm KNN with PSO 93.08%. This result show SVM algorithm more accurate than KNN algorithm by using PSO optimization. The performance of law enforcers in the trial case get more positive responses from the people of Indonesia in accordance with their comments or tweets in social media.
基于支持向量机和k近邻的执法绩效情感分析
情感分析或意见挖掘是一种将意见或评论分为积极或消极的方法。它是决策的重要来源,可以从在线情感评论中提取、识别和评估。本研究以印尼一案件为个案,探讨执法中的情绪分析。该方法采用支持向量机和k -最近邻(KNN)方法进行数据分类,并结合粒子游优化(PSO)方法提高分类性能。实验结果表明,粒子群算法提高了两种算法的性能,本文的粒子群算法使值SVM与值C = 1.0和Epsilon = 1.0的粒子群算法准确率达到100%,而对于算法KNN与粒子群算法准确率达到93.08%。结果表明,通过粒子群优化,SVM算法比KNN算法的准确率更高。根据印尼民众在社交媒体上的评论或推文,执法者在审判案件中的表现得到了更多积极的回应。
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