Survey: Emotion Recognition from Text Using Different Approaches
Source
Lecture Notes in Electrical Engineering
ISSN
18761100
Date Issued
2022-01-01
Author(s)
Shah, Aanal
Chopade, Madhuri
Patel, Parth
Patel, Parin
Abstract
Text Processing is a method for comprehending, analyzing, and cleaning text as well as performing actions on the same data. The technique is used to extract meaningful data from text. It is a written form of communication to express emotions through text. Happy, neutral, fear, sadness, surprise, disgust, and anger are the most common emotional expressions. As a result, in the social media era, identifying emotions from text is especially important. A survey of operational methods and approaches for identifying emotion from textual data is discussed in this paper. This research primarily focuses on existing datasets and methodologies that incorporate a Lexical keyword, Machine Learning and Hybrid-based approach.
Subjects
Emotion detection | Human-computer interaction | Lexicon-based | Machine learning
