A Literature Review on Cross Domain Sentiment Analysis Using Machine learning

Nancy Kansal, Lipika Goel, Sonam Gupta
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引用次数: 5

Abstract

Sentiment analysis is the field of NLP which analyzes the sentiments of text written by users on online sites in the form of reviews. These reviews may be either in the form of a word, sentence, document, or ratings. These reviews are used as datasets when applied to train a classifier. These datasets are applied in the annotated form with the positive, negative or neutral labels as an input to train the classifier. This trained classifier is used to test other reviews, either in the same or different domains to know like or dislike of the user for the related field. Various researches have been done in single and cross domain sentiment analysis. The new methods proposed are overcoming the previous ones but according to this survey, no methods best suit the proposed work. In this article, the authors review the methods and techniques that are given by various researchers in cross domain sentiment analysis and how those are compared with the pre-existing methods for the related work.
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基于机器学习的跨领域情感分析的文献综述
情感分析是NLP的一个领域,它以评论的形式分析用户在网站上写的文本的情感。这些评论可以是单词、句子、文档或评级的形式。当用于训练分类器时,这些评论被用作数据集。这些数据集以带注释的形式应用,带有正、负或中性标签作为训练分类器的输入。这个训练过的分类器用于测试其他评论,无论是在相同的领域还是不同的领域,以了解用户对相关领域的喜欢或不喜欢。在单领域和跨领域情感分析方面已经有了很多研究。提出的新方法克服了以往的方法,但根据这次调查,没有一种方法最适合所提出的工作。在本文中,作者回顾了各种研究人员在跨领域情感分析中给出的方法和技术,并将其与相关工作中已有的方法进行了比较。
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