Babu Nirmal Varghese, Kanaga E Grace Mary
Karunya Institute of Technology and Sciences, Coimbatore, India.
SN Comput Sci. 2022;3(1):74. doi: 10.1007/s42979-021-00958-1. Epub 2021 Nov 19.
Sentiment analysis is an emerging trend nowadays to understand people's sentiments in multiple situations in their quotidian life. Social media data would be utilized for the entire process ie the analysis and classification processes and it consists of text data and emoticons, emojis, etc. Many experiments were conducted in the antecedent studies utilizing Binary and Ternary Classification whereas Multi-class Classification gives more precise and precise Classification. In Multi-class Classification, the data would be divided into multiple sub-classes predicated on the polarities. Machine Learning and Deep Learning Techniques would be utilized for the classification process. Utilizing Social media, sentiment levels can be monitored or analysed. This paper shows a review of the sentiment analysis on Social media data for apprehensiveness or dejection detection utilizing various artificial intelligence techniques. In the survey, it was optically canvassed that social media data which consists of texts,emoticons and emojis were utilized for the sentiment identification utilizing various artificial intelligence techniques. Multi Class Classification with Deep Learning Algorithm shows higher precision value during the sentiment analysis.
情感分析是当下一种新兴趋势,旨在了解人们在日常生活中多种情况下的情感。整个过程(即分析和分类过程)将利用社交媒体数据,这些数据包括文本数据以及表情符号、emoji等。先前的研究利用二元和三元分类进行了许多实验,而多类分类能给出更精确的分类。在多类分类中,数据将根据极性分为多个子类。分类过程将利用机器学习和深度学习技术。利用社交媒体,可以监测或分析情感水平。本文展示了对利用各种人工智能技术对社交媒体数据进行情感分析以检测忧虑或沮丧情绪的综述。在调查中,经观察发现,由文本、表情符号和emoji组成的社交媒体数据被用于利用各种人工智能技术进行情感识别。使用深度学习算法的多类分类在情感分析期间显示出更高的精确值。