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Sentiment Analysis and Topic Modelling for Identification of Government Service Satisfaction

机译:识别政府服务满意度的情感分析与主题建模

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The era of information disclosure and social media tends to make people express their opinions on social media. Indonesia is one of the top five nations social media users in general, especially Twitter. This becomes an interesting thing when trying to see public opinion on a government service. Opinion mining can be used to get information from textual twitter to be processed into an information by classifying existing information into positive information classes and negative information classes. In this research, we try to do opinion mining on public opinion about Identification card (KTP) service in Surabaya city. We compare between supervised and unsupervised methods to see their performance for each classifier. In unsupervised the sentiwordnet approach is used to classify between negative and positive opinions. Supervised Support Vector Machine (SVM) method is used to create a classification model to define an opinion. Before the data is classified, preprocessing steps are used to make the data better. In addition, the Latent Dirichlet Allocation (LDA) approach is used to see for topics that tend to be strong which affects a negative or positive opinion. The result of the classification model by using SVM achieved accuracy rate of 75%.
机译:信息披露和社交媒体时代趋向于使人们在社交媒体上表达自己的观点。总体而言,印尼是社交媒体用户排名前五位的国家之一,尤其是Twitter。当试图看到对政府服务的舆论时,这变得很有趣。通过将现有信息分类为肯定信息类和否定信息类,可以使用观点挖掘来从文本Twitter中获取要处理的信息。在这项研究中,我们尝试对泗水市有关身份证(KTP)服务的公众意见进行意见挖掘。我们在有监督方法和无监督方法之间进行比较,以查看它们对每个分类器的性能。在无监督的情况下,sentiwordnet方法用于对消极意见和积极意见进行分类。监督支持向量机(SVM)方法用于创建分类模型以定义意见。在对数据进行分类之前,将使用预处理步骤使数据更好。此外,潜在狄利克雷分配(LDA)方法用于查看倾向于强烈的主题,从而影响负面或正面的观点。使用支持向量机的分类模型结果达到了75%的准确率。

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