A Survey on Emotion Detection from Text in Social Media Platforms

M. Usman Ashraf
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引用次数: 2

Abstract

This paper provides an overview of the evolving field of emotion detection and identifies the current generation of methods of emotion detection from social media platforms as well as the challenges. The challenges in the field of current emotion detection are discussed in detail and potential alternatives are proposed to enhance the ability to detect emotions in real-life systems that emphasize interactions between humans and computers as well as advertisements, recommendation systems, and medical fields such as computer-based therapy. These solutions include the extraction of semantic analysis keywords, and ontology design with the evaluation of emotions. There are multiple models and classifications of emotions such as Ekman’s model (Happy, Anger, Sad, Disgust,Fear, Surprise), and Plutchik’s model (anger-fear, surprise-anticipation, joy-sadness, joy-sadness). Further, a systematic review of publications on textual emotions detection from social media platforms, state-of-the-art methods, and existing challenges presented. Finally, we conclude with some recommendations based on critical analysis of existing techniques and determine future research directions presented at last.
社交媒体平台文本情感检测研究
本文概述了不断发展的情感检测领域,并确定了来自社交媒体平台的当前一代情感检测方法以及面临的挑战。详细讨论了当前情感检测领域的挑战,并提出了潜在的替代方案,以增强在强调人与计算机之间相互作用的现实生活系统以及广告,推荐系统和医学领域(如基于计算机的治疗)中检测情感的能力。这些解决方案包括语义分析关键字的提取和带有情感评价的本体设计。情绪有多种模型和分类,如Ekman的模型(快乐、愤怒、悲伤、厌恶、恐惧、惊讶)和Plutchik的模型(愤怒-恐惧、惊讶-期待、喜悦-悲伤、喜悦-悲伤)。此外,系统回顾了社交媒体平台上关于文本情感检测的出版物,最先进的方法和现有的挑战。最后,在对现有技术进行批判性分析的基础上,提出了一些建议,并确定了未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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