Bi-ISCA: Bidirectional Inter-Sentence Contextual Attention Mechanism for
Detecting Sarcasm in User Generated Noisy Short Text
- URL: http://arxiv.org/abs/2011.11465v3
- Date: Tue, 20 Apr 2021 17:36:02 GMT
- Title: Bi-ISCA: Bidirectional Inter-Sentence Contextual Attention Mechanism for
Detecting Sarcasm in User Generated Noisy Short Text
- Authors: Prakamya Mishra, Saroj Kaushik and Kuntal Dey
- Abstract summary: This paper proposes a new state-of-the-art deep learning architecture that uses a novel Bidirectional Inter-Sentence Contextual Attention mechanism (Bi-ISCA)
Bi-ISCA captures inter-sentence dependencies for detecting sarcasm in the user-generated short text using only the conversational context.
The proposed deep learning model demonstrates the capability to capture explicit, implicit, and contextual incongruous words & phrases responsible for invoking sarcasm.
- Score: 8.36639545285691
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Many online comments on social media platforms are hateful, humorous, or
sarcastic. The sarcastic nature of these comments (especially the short ones)
alters their actual implied sentiments, which leads to misinterpretations by
the existing sentiment analysis models. A lot of research has already been done
to detect sarcasm in the text using user-based, topical, and conversational
information but not much work has been done to use inter-sentence contextual
information for detecting the same. This paper proposes a new state-of-the-art
deep learning architecture that uses a novel Bidirectional Inter-Sentence
Contextual Attention mechanism (Bi-ISCA) to capture inter-sentence dependencies
for detecting sarcasm in the user-generated short text using only the
conversational context. The proposed deep learning model demonstrates the
capability to capture explicit, implicit, and contextual incongruous words &
phrases responsible for invoking sarcasm. Bi-ISCA generates state-of-the-art
results on two widely used benchmark datasets for the sarcasm detection task
(Reddit and Twitter). To the best of our knowledge, none of the existing
state-of-the-art models use an inter-sentence contextual attention mechanism to
detect sarcasm in the user-generated short text using only conversational
context.
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