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Modeling a Novel Approach for Emotion Recognition Using Learning and Natural Language Processing

Published: 09 March 2024 Publication History

Abstract

Various facts, including politics, entertainment, industry, and research fields, are connected to analyzing the audience's emotions. Sentiment Analysis (SA) is a Natural Language Processing (NLP) concept that uses statistical and lexical forms as well as learning techniques to forecast how different types of content in social media will express the audience's neutral, positive, and negative emotions. There is lack of an adequate tool to quantify the characteristics and independent text for assessing the primary audience emotion from the available online social media dataset. The focus of this research is on modeling a cutting-edge method for decoding the connectivity among social media texts and assessing audience emotions. Here, a novel dense layer graph model (DLG-TF) for textual feature analysis is used to analyze the relevant connectedness inside the complex media environment to forecast emotions. The information from the social media dataset is extracted using some popular convolution network models, and the predictions are made by examining the textual properties. The experimental results show that, when compared to different standard emotions, the proposed DLG-TF model accurately predicts a greater number of possible emotions. The macro-average of baseline is 58%, the affective is 55%, the crawl is 55%, and the ultra-dense is 59%, respectively. The feature analysis comparison of baseline, affective, crawl, ultra-dense and DLG-TF using the unsupervised model based on EmoTweet gives the precision, recall, and F1-score of the anticipated model are explained. The micro- and macro-average based on these parameters are compared and analyzed. The macro-average of baseline is 47%, the affective is 46%, the crawl is 50%, and the ultra-dense is 85%, respectively. It makes precise predictions using the social media dataset that is readily available. A few criteria, including accuracy, recall, precision, and F-measure, are assessed and contrasted with alternative methods.

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  • (2024)Transformers Unveiled: A Comprehensive Evaluation of Emotion Detection in Text Transcription2024 Global Conference on Wireless and Optical Technologies (GCWOT)10.1109/GCWOT63882.2024.10805688(1-7)Online publication date: 25-Sep-2024

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  1. Modeling a Novel Approach for Emotion Recognition Using Learning and Natural Language Processing

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    cover image ACM Transactions on Asian and Low-Resource Language Information Processing
    ACM Transactions on Asian and Low-Resource Language Information Processing  Volume 23, Issue 3
    March 2024
    277 pages
    EISSN:2375-4702
    DOI:10.1145/3613569
    Issue’s Table of Contents

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    Association for Computing Machinery

    New York, NY, United States

    Publication History

    Published: 09 March 2024
    Online AM: 22 January 2024
    Accepted: 14 December 2023
    Revised: 18 August 2023
    Received: 31 May 2023
    Published in TALLIP Volume 23, Issue 3

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    Author Tags

    1. Social media
    2. emotion recognition
    3. feature representation
    4. prediction
    5. complex network

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    • (2024)Transformers Unveiled: A Comprehensive Evaluation of Emotion Detection in Text Transcription2024 Global Conference on Wireless and Optical Technologies (GCWOT)10.1109/GCWOT63882.2024.10805688(1-7)Online publication date: 25-Sep-2024

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