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Automatic keyword selection for sentiment analysis using class dependency and dissimilarity

机译:使用类相关性和不相似性自动选择关键词进行情感分析

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Sentiment analysis is a task for analyzing and extracting opinions from review documents on web sites, blogs, social media, and others in order to understand the opinions of consumers. Sentiment analysis methods can analyze sentiments of people and identify types of sentiment by classifying them into positive or negative opinions. In this paper, we propose a new automatic keyword selection method for selecting subsets of keywords for sentiment analysis using the information of class dependency and dissimilarity. The proposed method can be used for removing noisy words for reducing the size of training data for faster training by classifiers. The experimental results show that the proposed method can select the concerned subset of keywords for reducing the size of training data and can improve the classification performance of classifiers, compared with four different types of classifiers.
机译:情感分析是一项任务,用于从网站,博客,社交媒体等上的评论文档中分析和提取观点,以了解消费者的观点。情感分析方法可以分析人们的情感并通过将情感分为正面或负面观点来识别情感类型。在本文中,我们提出了一种新的自动关键词选择方法,该方法利用类别相关性和不相似性信息来选择用于情感分析的关键词子集。所提出的方法可以用于去除嘈杂的单词,以减少训练数据的大小,从而使分类器可以更快地进行训练。实验结果表明,与四种不同类型的分类器相比,该方法可以选择所关注的关键词子集以减少训练数据的大小,并可以提高分类器的分类性能。

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