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Deep Sentiment Analysis of Twitter Data Using a Hybrid Ghost Convolution Neural Network Model.

Mohammed Hasan Ali Al-Abyadh1,2, Mohamed A M Iesa3, Hani Abdel Hafeez Abdel Azeem4

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|July 28, 2022
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Summary
This summary is machine-generated.

Hybrid models combining deep learning with Support Vector Machines (SVM) significantly improve sentiment analysis accuracy on complex datasets. These advanced approaches outperform traditional methods for analyzing public opinion on social media.

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Area of Science:

  • Natural Language Processing
  • Machine Learning
  • Computational Social Science

Background:

  • Sentiment analysis of public opinion on platforms like Twitter and Facebook faces challenges with complex training data.
  • Traditional sentiment analysis models often exhibit limitations in accuracy and trustworthiness.
  • Deep learning algorithms demonstrate significant potential for enhancing sentiment analysis tasks.

Purpose of the Study:

  • To assess the dependability of various hybrid sentiment analysis approaches across diverse datasets.
  • To compare the performance of hybrid models against single models in sentiment analysis.
  • To evaluate the accuracy and computational efficiency of integrated deep learning and Support Vector Machine (SVM) models.

Main Methods:

  • Development of hybrid models by integrating Support Vector Machine (SVM), Long Short-Term Memory (LSTM), and Convolutional Neural Network (CNN).
  • Evaluation of model dependability and computation time on multiple text datasets, including tweets and reviews.
  • Comparison of hybrid models against individual models, focusing on deep learning and SVM integration.

Main Results:

  • Hybrid models, particularly those combining deep learning with SVM, consistently outperformed single models across all tested datasets.
  • The proposed deep learning-SVM hybrid model achieved high accuracy, reaching 91.3% and 91.5% on specific datasets.
  • While LSTM offered higher results, it required longer processing times; CNN demanded less hyperparameter tuning.

Conclusions:

  • Hybrid deep learning-SVM models represent a significant advancement in sentiment analysis accuracy.
  • The integration of LSTM, CNN, and SVM offers a robust framework for sophisticated sentiment analysis.
  • These hybrid approaches provide a more dependable solution for analyzing public opinion from social media data.