Challenges of Sarcasm Detection for Social Network : A Literature Review

Nowadays, sarcasm recognition and detection simplified with various domains knowledge, among others, computer science, social science, psychology, mathematics, and many more. This article aims to explain trends in sentiment analysis especially sarcasm detection in the last ten years and its directio...

Full description

Bibliographic Details
Main Authors: Afiyati Afiyati, Azhari Azhari, Anny Kartika Sari, Abdul Karim
Format: Article
Language:Indonesian
Published: Universitas Muhammadiyah Purwokerto 2020-11-01
Series:Jurnal Informatika
Subjects:
Online Access:http://jurnalnasional.ump.ac.id/index.php/JUITA/article/view/8709
_version_ 1818531089432444928
author Afiyati Afiyati
Azhari Azhari
Anny Kartika Sari
Abdul Karim
author_facet Afiyati Afiyati
Azhari Azhari
Anny Kartika Sari
Abdul Karim
author_sort Afiyati Afiyati
collection DOAJ
description Nowadays, sarcasm recognition and detection simplified with various domains knowledge, among others, computer science, social science, psychology, mathematics, and many more. This article aims to explain trends in sentiment analysis especially sarcasm detection in the last ten years and its direction in the future. We review journals with the title’s keyword “sarcasm” and published from the year 2008 until 2018. The articles were classified based on the most frequently discussed topics among others: the dataset, pre-processing, annotations, approaches, features, context, and methods used. The significant increase in the number of articles on “sarcasm” in recent years indicates that research in this area still has enormous opportunities. The research about “sarcasm” also became very interesting because only a few researchers offer solutions for unstructured language. Some hybrid approaches using classification and feature extraction are used to identify the sarcasm sentence using deep learning models. This article will provide a further explanation of the most widely used algorithms for sarcasm detection with object social media. At the end of this article also shown that the critical aspect of research on sarcasm sentence that could be done in the future is dataset usage with various languages that cover unstructured data problem with contextual information will effectively detect sarcasm sentence and will improve the existing performance.
first_indexed 2024-12-11T17:27:56Z
format Article
id doaj.art-4cf556c43f99415b85069b7355257574
institution Directory Open Access Journal
issn 2086-9398
2579-8901
language Indonesian
last_indexed 2024-12-11T17:27:56Z
publishDate 2020-11-01
publisher Universitas Muhammadiyah Purwokerto
record_format Article
series Jurnal Informatika
spelling doaj.art-4cf556c43f99415b85069b73552575742022-12-22T00:56:54ZindUniversitas Muhammadiyah PurwokertoJurnal Informatika2086-93982579-89012020-11-018216917810.30595/juita.v8i2.87093375Challenges of Sarcasm Detection for Social Network : A Literature ReviewAfiyati Afiyati0Azhari Azhari1Anny Kartika Sari2Abdul Karim3Universitas Mercu BuanaUniversitas Gadjah MadaUniversitas Gadjah Mada<p>National College Rahim Yar Khan Pakistan</p>Nowadays, sarcasm recognition and detection simplified with various domains knowledge, among others, computer science, social science, psychology, mathematics, and many more. This article aims to explain trends in sentiment analysis especially sarcasm detection in the last ten years and its direction in the future. We review journals with the title’s keyword “sarcasm” and published from the year 2008 until 2018. The articles were classified based on the most frequently discussed topics among others: the dataset, pre-processing, annotations, approaches, features, context, and methods used. The significant increase in the number of articles on “sarcasm” in recent years indicates that research in this area still has enormous opportunities. The research about “sarcasm” also became very interesting because only a few researchers offer solutions for unstructured language. Some hybrid approaches using classification and feature extraction are used to identify the sarcasm sentence using deep learning models. This article will provide a further explanation of the most widely used algorithms for sarcasm detection with object social media. At the end of this article also shown that the critical aspect of research on sarcasm sentence that could be done in the future is dataset usage with various languages that cover unstructured data problem with contextual information will effectively detect sarcasm sentence and will improve the existing performance.http://jurnalnasional.ump.ac.id/index.php/JUITA/article/view/8709sarcasm, recognition, detection, classification, performance
spellingShingle Afiyati Afiyati
Azhari Azhari
Anny Kartika Sari
Abdul Karim
Challenges of Sarcasm Detection for Social Network : A Literature Review
Jurnal Informatika
sarcasm, recognition, detection, classification, performance
title Challenges of Sarcasm Detection for Social Network : A Literature Review
title_full Challenges of Sarcasm Detection for Social Network : A Literature Review
title_fullStr Challenges of Sarcasm Detection for Social Network : A Literature Review
title_full_unstemmed Challenges of Sarcasm Detection for Social Network : A Literature Review
title_short Challenges of Sarcasm Detection for Social Network : A Literature Review
title_sort challenges of sarcasm detection for social network a literature review
topic sarcasm, recognition, detection, classification, performance
url http://jurnalnasional.ump.ac.id/index.php/JUITA/article/view/8709
work_keys_str_mv AT afiyatiafiyati challengesofsarcasmdetectionforsocialnetworkaliteraturereview
AT azhariazhari challengesofsarcasmdetectionforsocialnetworkaliteraturereview
AT annykartikasari challengesofsarcasmdetectionforsocialnetworkaliteraturereview
AT abdulkarim challengesofsarcasmdetectionforsocialnetworkaliteraturereview