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RGCL at IDAT‏: deep learning models for irony detection in Arabic language

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Publication date12/12/2019
Host publication‏Working Notes of FIRE 2019 - Forum for Information Retrieval Evaluation, Kolkata, India, 12th-15th December, 2019.
PublisherCEUR Workshop Proceedings
Pages416-425
Number of pages10
<mark>Original language</mark>English

Publication series

NameCEUR Workshop Proceedings
PublisherCEUR
Volume2517
ISSN (Print)1613-0073

Abstract

This article describes the system submitted by the RGCL team to the IDAT 2019 Shared Task: Irony Detection in Arabic Tweets. The system detects irony in Arabic tweets using deep learning. The paper evaluates the performance of several deep learning models, as well as how text cleaning and text pre-processing influence the accuracy of the system. Several runs were submitted. The highest F1 score achieved for one of the submissions was 0.818 making the team RGCL rank 4th out of 10 teams in nal results. Overall, we present a system that uses minimal pre-processing but capable of achieving competitive results.