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Current State of Text Sentiment Analysis from Opinion to Emotion Mining

Full Text: survey-SentimentAnalysis.pdf PDF

Sentiment analysis from text consists of extracting information about opinions, sentiments, and even emotions conveyed by writers towards topics of interest. It is often equated to opinion mining, but it should also encompass emotion mining. Opinion mining involves the use of natural language processing and machine learning to determine the attitude of a writer towards a subject. Emotion mining is also using similar technologies but is concerned with detecting and classifying writers emotions toward events or topics. Textual emotion-mining methods have various applications, including gaining information about customer satisfaction, helping in selecting teaching materials in e-learning, recommending products based on users emotions, and even predicting mental-health disorders. In surveys on sentiment analysis, which are often old or incomplete, the strong link between opinion mining and emotion mining is understated. This motivates the need for a different and new perspective on the literature on sentiment analysis, with a focus on emotion mining. We present the state-of-the-art methods and propose the following contributions: (1) a taxonomy of sentiment analysis; (2) a survey on polarity classification methods and resources, especially those related to emotion mining; (3) a complete survey on emotion theories and emotion-mining research; and (4) some useful resources, including lexicons and datasets.

Citation

A. Yaddolahi, A. Shahraki, O. Zaiane. " Current State of Text Sentiment Analysis from Opinion to Emotion Mining". ACM Computing Surveys, 50(2), pp 1-25, 33, May 2017.

Keywords: Emotion detection, text mining, polarity classification, opinion mining, sentiment analysis, data mining, machine learning
Category: In Journal
Web Links: Webdocs

BibTeX

@article{Yaddolahi+al:17,
  author = {Ali Yaddolahi and Ameneh Gholipour Shahraki and Osmar R. Zaiane},
  title = { Current State of Text Sentiment Analysis from Opinion to Emotion
    Mining},
  Volume = "50",
  Number = "2",
  Pages = {1-25, 33},
  journal = {ACM Computing Surveys},
  year = 2017,
}

Last Updated: October 29, 2019
Submitted by Sabina P

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