A Comparative Study on Sentiment Analysis Approaches and Methods

Gaurav Kumar Rajput, Ashok Kumar, Shakti Kundu
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引用次数: 1

Abstract

With the rapid development of Internet and its usages, Sentiment analysis, the subsidiary of Natural Language processing has also grown. Through, it the implicit emotion in the text can be powerfully mined and this information can be used by organization or enterprises to take further decisions and the unpredictable growth of data indubitably brings more opportunities and challenges to sentiment analysis. Binary Classification Problem, Data sparsely problem, polarity shift, accuracy related issues are primary problems. Multiples algorithms which are based on many approaches used for sentiment analysis, still to get the sentiment features from the particular content of text is still difficult one. In this paper provides a deep imminent of different sentiment methodologies and approaches in a comprehensive way and provide a insight of future challenges in sentiment analysis.
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情感分析方法与方法的比较研究
随着互联网的迅速发展及其应用,情感分析作为自然语言处理的一个分支也得到了发展。通过对文本中隐含的情感进行强有力的挖掘,并将这些信息用于组织或企业的进一步决策,数据的不可预测的增长无疑给情感分析带来了更多的机遇和挑战。二元分类问题、数据稀疏问题、极性转移、准确性相关问题是主要问题。基于多种方法的多重情感分析算法,从文本的特定内容中提取情感特征仍然是一个难点。本文全面介绍了不同的情感分析方法和方法,并提出了未来情感分析面临的挑战。
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