基于FVEC特征和机器学习方法的印尼语YouTube评论意见挖掘

Aina Musdholifah, Ekki Rinaldi
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引用次数: 4

摘要

需要从YouTube视频中的印尼评论中挖掘意见,以从消费者反馈中提取有趣的模式和有价值的信息。观点可以由观点和评论主题的组合组成。意见挖掘中所考虑的特征成为获得高质量意见的重要关键之一。本文提出利用FVEC和TF-IDF特征来表示评论。此外,本文还分别探讨了观点挖掘领域的两种流行的机器学习方法,即SVM和CNN,用于从YouTube视频的印尼语评论中提取观点。实验结果表明,在SVM和CNN上使用FVEC特征对所获得的意见质量(准确度)有非常显著的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FVEC feature and Machine Learning Approach for Indonesian Opinion Mining on YouTube Comments
Mining opinions from Indonesian comments from YouTube videos are required to extract interesting patterns and valuable information from consumer feedback. Opinions can consist of a combination of sentiments and topics from comments. The features considered in the mining of opinion become one of the important keys to getting a quality opinion. This paper proposes to utilize FVEC and TF-IDF features to represent the comments. In addition, two popular machine learning approaches in the field of opinion mining, i.e., SVM and CNN, are explored separately to extract opinions in Indonesian comments of YouTube videos. The experimental results show that the use of FVEC features on SVM and CNN achieves a very significant effect on the quality of opinions obtained, in term of accuracy.
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