A Comprehensive Survey on Aspect Based Word Embedding Models and Sentiment Analysis Classification Approaches

Monika Agrawal, Nageswara Rao Moparthi
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引用次数: 1

Abstract

Sentiment Analysis includes methods and techniques for businesses to understand and analyze customer reviews, feedback and opinion on a particular product or service. Sentiment Analysis uses Natural Language Processing (NLP) tools to analyze feelings or emotions, attitudes, opinions, thoughts, etc. behind the words. Sentiments such as positive, negative and neutral are associated with a particular product. Sentiment analysis is applicable in multi-domains such as customer feedback for a particular product, movie reviews, social and political comments. This survey basically focuses on different aspect-based word embedding models and aspect-based sentiment classification techniques, where the goal is to extract key features from the sentences and classify sentiment on entities at document level. Aspect Based Sentiment Analysis (ABSA) is a technique that concentrates not only the entire sentence but analyses key terms explicitly to predict the polarity as a whole. ABSA model accepts aspect categories and its corresponding aspect terms to generate sentiment corresponding to each aspect from the text corpus. This article provides a comprehensive survey on different word embedding models under CNN framework for aspect extraction and different machine learning techniques applicable for sentiment classification purpose.
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基于方面的词嵌入模型和情感分析分类方法综述
情感分析包括企业理解和分析客户对特定产品或服务的评论、反馈和意见的方法和技术。情感分析使用自然语言处理(NLP)工具来分析单词背后的感觉或情绪、态度、观点、想法等。积极、消极和中性等情绪与特定产品有关。情感分析适用于多个领域,如客户对特定产品的反馈、电影评论、社会和政治评论。本研究主要关注不同的基于方面的词嵌入模型和基于方面的情感分类技术,其目标是从句子中提取关键特征,并在文档层面对实体的情感进行分类。基于方面的情感分析(ABSA)是一种不仅集中整个句子,而且明确分析关键术语以预测整个极性的技术。ABSA模型接受方面类别及其对应的方面术语,生成与文本语料库中每个方面对应的情感。本文全面综述了CNN框架下用于方面提取的不同词嵌入模型和用于情感分类的不同机器学习技术。
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