Please use this identifier to cite or link to this item: http://hdl.handle.net/10263/7294
Title: Sarcasm Detection using Deep Learning
Authors: Jaiswal, Amit Kumar
Keywords: Sarcasm
Sarcasm Detection
Natural Language Processing
Issue Date: Jul-2021
Publisher: Indian Statistical Institute, Kolkata.
Citation: 22
Series/Report no.: Dissertation;CS-1932
Abstract: Sentiment analysis is often used in NLP to understand people’s subjective opinions. However, the analysis results may be biased if people use sarcasm in their statements. In order to correctly understand people’s true intentions, being able to detect sarcasm is critical. Detection of sarcasm is the crucial step in sentiment analysis due to the inherent ambiguous nature of sarcasm. It also involves the complexity of language which makes sarcasm detection much harder, even for humans too. Therefore, sarcasm detection has gained importance in many Natural Language Processing applications. So, any progress in sarcasm detection, is a positive step towards pushing the boundaries of Natural Language Processing. Many previous models have been developed to detect sarcasm based on the utterances in isolation, meaning only the reply text itself. Several researches have used both context and reply texts to detect sarcasm in reply and showed great improvement in performance. BERT, short for Bidirectional Encoder Representations from Transformers has been used for this specific task of sarcasm detection before and it has shown surprisingly good results for this task. So, in this project, we aim to improve the accuracy of sarcasm detection by further exploring the role of contextual information in detecting sarcasm. We will also investigate the performances of different BERT based models where we have utilized the BERT embedding with different networks and compare the models for different data setups.
Description: Dissertation under the supervision of Dr. Debapriyo Majumdar
URI: http://hdl.handle.net/10263/7294
Appears in Collections:Dissertations - M Tech (CS)

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