AI Based Emotion Detection for Textual Big Data: Techniques and Contribution
Online Social Media (OSM) like Facebook and Twitter has emerged as a powerful tool to express via text people’s opinions and feelings about the current surrounding events. Understanding the emotions at the fine-grained level of these expressed thoughts is important for system improvement. Such cruci...
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doaj-8a54bc7db70846f9a08752c81409a4b22021-09-25T23:45:20ZengMDPI AGBig Data and Cognitive Computing2504-22892021-09-015434310.3390/bdcc5030043AI Based Emotion Detection for Textual Big Data: Techniques and ContributionSheetal Kusal0Shruti Patil1Ketan Kotecha2Rajanikanth Aluvalu3Vijayakumar Varadarajan4Symbiosis Institute of Technology, Symbiosis International (Deemed University), Pune 412115, IndiaSymbiosis Centre for Applied Artificial Intelligence (SCAAI), Symbiosis Institute of Technology, Symbiosis International (Deemed University), Pune 412115, IndiaSymbiosis Centre for Applied Artificial Intelligence (SCAAI), Symbiosis Institute of Technology, Symbiosis International (Deemed University), Pune 412115, IndiaDepartment of CSE, Vardhaman College of Engineering, Hyderabad 500001, IndiaSchool of Computer Science and Engineering, The University of New South Wales, Sydney, NSW 2052, AustraliaOnline Social Media (OSM) like Facebook and Twitter has emerged as a powerful tool to express via text people’s opinions and feelings about the current surrounding events. Understanding the emotions at the fine-grained level of these expressed thoughts is important for system improvement. Such crucial insights cannot be completely obtained by doing AI-based big data sentiment analysis; hence, text-based emotion detection using AI in social media big data has become an upcoming area of Natural Language Processing research. It can be used in various fields such as understanding expressed emotions, human–computer interaction, data mining, online education, recommendation systems, and psychology. Even though the research work is ongoing in this domain, it still lacks a formal study that can give a qualitative (techniques used) and quantitative (contributions) literature overview. This study has considered 827 Scopus and 83 Web of Science research papers from the years 2005–2020 for the analysis. The qualitative review represents different emotion models, datasets, algorithms, and application domains of text-based emotion detection. The quantitative bibliometric review of contributions presents research details such as publications, volume, co-authorship networks, citation analysis, and demographic research distribution. In the end, challenges and probable solutions are showcased, which can provide future research directions in this area.https://www.mdpi.com/2504-2289/5/3/43artificial intelligencemachine learningnatural language processing (NLP)text-based emotion detection (TBED)online social media |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sheetal Kusal Shruti Patil Ketan Kotecha Rajanikanth Aluvalu Vijayakumar Varadarajan |
spellingShingle |
Sheetal Kusal Shruti Patil Ketan Kotecha Rajanikanth Aluvalu Vijayakumar Varadarajan AI Based Emotion Detection for Textual Big Data: Techniques and Contribution Big Data and Cognitive Computing artificial intelligence machine learning natural language processing (NLP) text-based emotion detection (TBED) online social media |
author_facet |
Sheetal Kusal Shruti Patil Ketan Kotecha Rajanikanth Aluvalu Vijayakumar Varadarajan |
author_sort |
Sheetal Kusal |
title |
AI Based Emotion Detection for Textual Big Data: Techniques and Contribution |
title_short |
AI Based Emotion Detection for Textual Big Data: Techniques and Contribution |
title_full |
AI Based Emotion Detection for Textual Big Data: Techniques and Contribution |
title_fullStr |
AI Based Emotion Detection for Textual Big Data: Techniques and Contribution |
title_full_unstemmed |
AI Based Emotion Detection for Textual Big Data: Techniques and Contribution |
title_sort |
ai based emotion detection for textual big data: techniques and contribution |
publisher |
MDPI AG |
series |
Big Data and Cognitive Computing |
issn |
2504-2289 |
publishDate |
2021-09-01 |
description |
Online Social Media (OSM) like Facebook and Twitter has emerged as a powerful tool to express via text people’s opinions and feelings about the current surrounding events. Understanding the emotions at the fine-grained level of these expressed thoughts is important for system improvement. Such crucial insights cannot be completely obtained by doing AI-based big data sentiment analysis; hence, text-based emotion detection using AI in social media big data has become an upcoming area of Natural Language Processing research. It can be used in various fields such as understanding expressed emotions, human–computer interaction, data mining, online education, recommendation systems, and psychology. Even though the research work is ongoing in this domain, it still lacks a formal study that can give a qualitative (techniques used) and quantitative (contributions) literature overview. This study has considered 827 Scopus and 83 Web of Science research papers from the years 2005–2020 for the analysis. The qualitative review represents different emotion models, datasets, algorithms, and application domains of text-based emotion detection. The quantitative bibliometric review of contributions presents research details such as publications, volume, co-authorship networks, citation analysis, and demographic research distribution. In the end, challenges and probable solutions are showcased, which can provide future research directions in this area. |
topic |
artificial intelligence machine learning natural language processing (NLP) text-based emotion detection (TBED) online social media |
url |
https://www.mdpi.com/2504-2289/5/3/43 |
work_keys_str_mv |
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