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Advancing Emotion Detection in Sentiment Analysis with Concept-Level Computing and Machine Learning

M. Kathiravan, R. Buvanesvari, M. Ramya, Ritesh Vijay, V. Kaliraj, R Vengatramana

202412 citationsDOI

Abstract

This study introduces an innovative approach to sentiment analysis and opinion mining, overcoming the limitations of traditional techniques by employing a concept-level analysis framework. Leveraging linguistic insights, common-sense reasoning, and sophisticated machine learning, the proposed method transforms unstructured text into analyzable data, resulting in a significant precision enhancement. Achieving a 92.26% precision rate, our model outperforms existing methods, particularly in parsing complex sentences with conjunctions and emotional variance. This methodology marks a significant advancement in web-based sentiment interpretation, providing an intricate, accurate, and holistic tool for analyzing online discourse and public sentiment.

Topics & Concepts

Computer scienceSentiment analysisEmotion detectionArtificial intelligenceNatural language processingMachine learningEmotion recognitionSentiment Analysis and Opinion Mining