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EmoNet: Unveiling Affective States Through Convolutional Neural Networks in Textual Emotion Classification

Salloum, Said; Tahat, Khalaf; Mansoori, Ahmed; Alfaisal, Raghad; Tahat, Dina

Authors

Said Salloum

Khalaf Tahat

Ahmed Mansoori

Raghad Alfaisal

Dina Tahat



Abstract

In the burgeoning field of natural language processing, emotion classification from textual data has emerged as a critical task with applications ranging from sentiment analysis to mental health assessment. This paper explores the utilization of Convolutional Neural Networks (CNNs), traditionally dominant in image processing, for classifying emotions in text. Our proposed CNN model leverages the inherent hierarchical structure of language to identify and learn emotion-specific features, with an emphasis on capturing contextual n-grams through convolutional filters. The approach is substantiated by a comprehensive dataset, subjected to rigorous preprocessing and vectorization via TF-IDF to convert text into a numerical format suitable for deep learning. The model's architecture is meticulously crafted, incorporating convolutional layers followed by global max pooling and dense layers, culminating in a softmax activation function tailored for multi-class classification. Our findings demonstrate the model's robustness, achieving a notable accuracy of 96.08% on the test set. This high level of precision is further corroborated by the Receiver Operating Characteristic (ROC) analysis, revealing exceptional area under the curve (AUC) values across various emotion categories. The results suggest that CNNs hold significant promise for emotion recognition tasks in textual data, providing an effective framework for future explorations in the domain.

Presentation Conference Type Conference Paper (published)
Conference Name 2024 International Conference on Intelligent Computing, Communication, Networking and Services (ICCNS)
Start Date Sep 24, 2024
End Date Sep 27, 2024
Publication Date Sep 24, 2024
Deposit Date Jan 23, 2025
Publisher Institute of Electrical and Electronics Engineers
Pages 302-305
Book Title 2024 International Conference on Intelligent Computing, Communication, Networking and Services (ICCNS)
ISBN 9798350354706
DOI https://doi.org/10.1109/iccns62192.2024.10776275