Sentiment analysis of mass rapid transit jakarta using naïve bayes classifier and rule-based opinion target detection on Twitter

Dhanika Jeihan Aguinta, P. P. Adikara, R. Wihandika
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引用次数: 1

Abstract

Jakarta Mass Rapid Transit (MRT) is a national project in Indonesia that has been operated since the beginning of 2019 for phase 1 and still under further development. People's opinions posted on Twitter concerning Jakarta MRT could become an evaluation material, viewed from the sentiment score and object of the opinion. To analyze the sentiment score, opinion sentiment classified using the naive Bayes classifier, followed by rule-based target opinion detection. The classification process is using bag of words (BoW) features and lexicon-based features. In the weighting process of the Lexicon-based features and detection of the target opinion, POS tagging is employed to get the word class. In determining the target opinion object, the POS tagging result is used to do chunking that has specific rules, specific to noun-phrase (NP) tags. Therefore, the obtained sentiment class and object become the target in the opinion. Using Naïve Bayes with the bag of words features and lexicon-based, we achieve precision 0,92, recall 1,0, f-measure 0,95, and accuracy 0,92. The results of the rule-based target opinion detection are 0.78, 0.85, 0.79, and 0.75 for precision, recall, f-measure, and accuracy, respectively.
基于naïve贝叶斯分类器和Twitter上基于规则的意见目标检测的雅加达捷运情感分析
雅加达捷运(MRT)是印度尼西亚的一个国家项目,自2019年初开始运营,目前仍在进一步开发中。人们在Twitter上发布的关于雅加达捷运的意见,可以从情绪得分和意见的对象来看,成为一种评价材料。为了分析情感得分,使用朴素贝叶斯分类器对意见情感进行分类,然后进行基于规则的目标意见检测。分类过程采用词包特征和基于词典的特征。在基于词典的特征加权和目标意见检测过程中,使用词性标注来获取词类。在确定目标意见对象时,使用词性标注结果进行具有特定规则的分块,具体到名词短语(NP)标记。因此,获得的情感类和对象成为意见中的目标。使用Naïve贝叶斯与词包特征和基于词典,我们实现了精度0.92,召回率1,0,f-measure 0.95和准确率0.92。基于规则的目标意见检测的精度、召回率、f-measure和准确度分别为0.78、0.85、0.79和0.75。
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