Random forest: A hybrid implementation for sarcasm detection in public opinion mining

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Abstract

Modelling the sentiment with context is one of the most important part in Sentiment analysis. There are various classifiers which helps in detecting and classifying it. Detection of sentiment with consideration of sarcasm would make it more accurate. But detection of sarcasm in people review is a challenging task and it may lead to wrong decision making or classification if not detected. This paper uses Decision Tree and Random forest classifiers and compares the performance of both. Here we consider the random forest as hybrid decision tree classifier. We propose that performance of random forest classifier is better than any other normal decision tree classifier with appropriate reasoning.

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Joshi, A. M., & Prabhune, S. (2019). Random forest: A hybrid implementation for sarcasm detection in public opinion mining. International Journal of Innovative Technology and Exploring Engineering, 8(12), 5022–5025. https://doi.org/10.35940/ijitee.L3758.1081219

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