Verb Oriented Sentiment Classification

Mostafa Karamibekr, A. Ghorbani
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引用次数: 43

Abstract

Sentiment analysis refers to a broad range of fields of natural language processing, computational linguistics and text mining. Sentiment classification of reviews and comments has emerged as the most useful application in the area of sentiment analysis. Although sentiment classification generally is carried out at the document level, accurate results require analysis at the sentence level. Bag of words and feature based sentiment are the most popular approaches used by researchers to deal with sentiment classification of opinions about products such as movies, electronics, cars etc. Until recently most classification techniques have considered adjectives, adverbs and nouns as features. This paper proposes a new approach based on verb as an important opinion term particularly in social domains. We extract opinion structures which consider verb as the core element. Sentiment orientation is recognized from sentiments inside of opinion structures and their association with the social issue. Experimental results show that considering verbs improves the performance of sentiment classification.
面向动词的情感分类
情感分析涉及自然语言处理、计算语言学和文本挖掘等广泛领域。评论和评论的情感分类已经成为情感分析领域最有用的应用。虽然情感分类通常是在文档层面进行的,但准确的结果需要在句子层面进行分析。对于电影、电子产品、汽车等产品的观点进行情感分类,最常用的方法是词包和基于特征的情感分类。直到最近,大多数分类技术都将形容词、副词和名词作为特征。本文提出了一种基于动词作为重要意见术语的新方法,特别是在社会领域。我们提取了以动词为核心元素的意见结构。情绪取向是通过意见结构内部的情绪以及它们与社会问题的关联来识别的。实验结果表明,考虑动词可以提高情感分类的性能。
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