论文标题

关于基于文本的情感检测的综述 - 技术,应用程序,数据集和未来方向

A Review on Text-Based Emotion Detection -- Techniques, Applications, Datasets, and Future Directions

论文作者

Kusal, Sheetal, Patil, Shruti, Choudrie, Jyoti, Kotecha, Ketan, Vora, Deepali, Pappas, Ilias

论文摘要

人工智能(AI)已用于处理数据,以做出决策,与人类互动并了解他们的感受和情感。随着互联网的出现,人们通过文本消息应用程序分享并表达了对日常活动以及全球和本地活动的想法。因此,机器必须了解意见,反馈和文本对话中的情绪,以便为当今的在线世界中的用户提供情感意识的回应。基于文本的情感检测(TBED)领域正在前进,为各种应用程序(例如企业和财务)提供自动解决方案,仅举几例。最近,TBED引起了很多关注。本文介绍了2005年至2021年在TBED中发表的现有文献的系统文献综述。这篇评论精心研究了IEEE,Science Direct,Scopus和Web of Science数据库的63篇研究论文,以解决四个主要的研究问题。它还回顾了TBED在各个研究领域的不同应用,并强调了其使用。还代表了各种情感模型,技术,特征提取方法,数据集和未来方向的研究挑战的概述。

Artificial Intelligence (AI) has been used for processing data to make decisions, interact with humans, and understand their feelings and emotions. With the advent of the internet, people share and express their thoughts on day-to-day activities and global and local events through text messaging applications. Hence, it is essential for machines to understand emotions in opinions, feedback, and textual dialogues to provide emotionally aware responses to users in today's online world. The field of text-based emotion detection (TBED) is advancing to provide automated solutions to various applications, such as businesses, and finances, to name a few. TBED has gained a lot of attention in recent times. The paper presents a systematic literature review of the existing literature published between 2005 to 2021 in TBED. This review has meticulously examined 63 research papers from IEEE, Science Direct, Scopus, and Web of Science databases to address four primary research questions. It also reviews the different applications of TBED across various research domains and highlights its use. An overview of various emotion models, techniques, feature extraction methods, datasets, and research challenges with future directions has also been represented.

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