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Experiment with Lexicon Based Techniques on Domain-Specific Malay Document Sentiment Analysis

机译:基于词汇的技术对特定领域马来文文档情感分析的实验

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摘要

The nature of Sentiment Analysis (SA) mostly is generated by human beings. They expressed their emotion in writing or expressing their feeling via social media or blog. The Advancement of Internet and the increasing number of users in social media are the factors on why the sentiment analysis gaining its popularity in Malay languages. This research aims to implement the Sentiment Analysis on Malay language documents and propose a lexicon-based technique for Malay based sentiment analysis on specific domain such as Song, Politic and Product to find the best SA classifier on the Domain-Specific Malay Document Sentiment Analysis. Analysis of the evaluation result is based on the comparison of expert evaluation, Lexicon-based evaluation's result and Naïve Bayes SA classification's result, which is Naïve Bayes represent Machine Learning approach in this study. The result shows Lexicon-based Classification has outperformed Naïve Bayes SA classification in overall 3 topics which are Song, Politic and Product in average of 70% compared to 50% average for Naïve Bayes. For the future works, the researcher would like to improve in the particular area such as Sentiment Analysis based on the Malay dialect, increase the data in the dictionary and applying phrase level for better and optimum results.
机译:情感分析(SA)的性质主要是由人类产生的。他们通过社交媒体或博客以书面形式表达自己的情感或表达自己的感觉。互联网的进步和社交媒体中用户的增加是情感分析在马来语中流行的原因。这项研究旨在实施对马来语文档的情感分析,并提出一种基于词典的技术来对特定领域(例如歌曲,政治和产品)进行基于马来语的情感分析,以在针对特定领域的马来语文档情感分析中找到最佳的SA分类器。评估结果的分析基于专家评估,基于词典的评估结果和朴素贝叶斯SA分类结果的比较,朴素贝叶斯代表本研究中的机器学习方法。结果表明,基于词汇的分类在全部3个主题(歌曲,政治和产品)中的表现均优于朴素贝叶斯SA分类,平均而言,朴素贝叶斯的分类率为70%,而朴素贝叶斯的平均值为50%。对于将来的工作,研究人员希望在特定领域进行改进,例如基于马来语的情感分析,增加词典中的数据并应用短语级别以获得更好和最佳的结果。

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