Linguistic Based Emotion Detection from Live Social Media Data Classification Using Metaheuristic Deep Learning Techniques

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Suraya Mubeen
Dr Nandini Kulkarni
Manuel R. Tanpoco
Dr. R.Dinesh Kumar
Lakshmu Naidu M
Tanuja Dhope

Abstract

A crucial area of research that can reveal numerous useful insights is emotional recognition. Several visible ways, including speech, gestures, written material, and facial expressions, can be used to portray emotion. Natural language processing (NLP) and DL concepts are utilised in the content-based categorization problem that is at the core of emotion recognition in text documents.This research propose novel technique in linguistic based emotion detection by social media using metaheuristic deep learning architectures. Here the input has been collected as live social media data and processed for noise removal, smoothening and dimensionality reduction. Processed data has been extracted and classified using metaheuristic swarm regressive adversarial kernel component analysis. Experimental analysis has been carried out in terms of precision, accuracy, recall, F-1 score, RMSE and MAP for various social media dataset.

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How to Cite
Mubeen, . S. ., Kulkarni, D. N. ., Tanpoco, M. R., Kumar, D. R. ., M, . L. N. ., & Dhope, T. . (2022). Linguistic Based Emotion Detection from Live Social Media Data Classification Using Metaheuristic Deep Learning Techniques. International Journal of Communication Networks and Information Security (IJCNIS), 14(3), 176–186. https://doi.org/10.17762/ijcnis.v14i3.5604
Section
Research Articles