Sentiment Analyzer with Rich Features for Ironic and Sarcastic Tweets

نویسندگان

  • Piyoros Tungthamthiti
  • Enrico Santus
  • Hongzhi Xu
  • Chu-Ren Huang
  • Kiyoaki Shirai
چکیده

Sentiment Analysis of tweets is a complex task, because these short messages employ unconventional language to increase the expressiveness. This task becomes even more difficult when people use figurative language (e.g. irony, sarcasm and metaphors) because it causes a mismatch between the literal meaning and the actual expressed sentiment. In this paper, we describe a sentiment analysis system designed for handling ironic and sarcastic tweets. Features grounded on several linguistic levels are proposed and used to classify the tweets in a 11-scale range, using a decision tree. The system is evaluated on the dataset released by the organizers of the SemEval 2015, task 11. The results show that our method largely outperforms the systems proposed by the participants of the task on ironic and sarcastic tweets.

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تاریخ انتشار 2015