Was that Sarcasm?: A Literature Survey on Sarcasm Detection
- URL: http://arxiv.org/abs/2412.00425v1
- Date: Sat, 30 Nov 2024 10:38:26 GMT
- Title: Was that Sarcasm?: A Literature Survey on Sarcasm Detection
- Authors: Harleen Kaur Bagga, Jasmine Bernard, Sahil Shaheen, Sarthak Arora,
- Abstract summary: Being able to interpret sarcasm is often termed as a sign of intelligence, given the complex nature of sarcasm.
This Literature Survey delves into different aspects of sarcasm detection, to create an understanding of the underlying problems faced during detection, approaches used to solve this problem, and different forms of available datasets for sarcasm detection.
- Score: 0.19736111241221438
- License:
- Abstract: Sarcasm is hard to interpret as human beings. Being able to interpret sarcasm is often termed as a sign of intelligence, given the complex nature of sarcasm. Hence, this is a field of Natural Language Processing which is still complex for computers to decipher. This Literature Survey delves into different aspects of sarcasm detection, to create an understanding of the underlying problems faced during detection, approaches used to solve this problem, and different forms of available datasets for sarcasm detection.
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