Applied Artificial Intelligence (Dec 2024)

Sentiment Analysis of Short Texts Using SVMs and VSMs-Based Multiclass Semantic Classification

  • K. Suresh Kumar,
  • A.S. Radha Mani,
  • T. Ananth Kumar,
  • Ahmad Jalili,
  • Mehdi Gheisari,
  • Yasir Malik,
  • Hsing-Chung Chen,
  • Ata Jahangir Moshayedi

DOI
https://doi.org/10.1080/08839514.2024.2321555
Journal volume & issue
Vol. 38, no. 1

Abstract

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ABSTRACTIn our approach, a hybrid machine learning model is proposed which uses Enhanced Vector Space Model (EVSM) along with Hybrid Support Vector Machine (HSVM) classifier. Initially the social media-based information is retrieved using Enhanced Vector Space Model (EVSM). EVSMs are employed in order to characterize the text content by mapping them into high-dimensional vector spaces, capturing the relationships between words and their contextual meanings. Rigorous feature selection methods are employed to designate texts for review, and a multiclass semantic classification algorithm, specifically the HSVM classifier, is utilized for categorization. Decision tree algorithm is used along with SVM to refine the selection process. To enhance sentiment analysis accuracy, sentiment dictionaries are not only presented but also extended through the expansion of Stanford’s GloVE tool. To enhance precision, the proposed work introduces weight-enhancing methods for processing renowned text weights. Sentiments are classified into positive, negative, and neutral categories. Notably, the achieved results demonstrate improved accuracy, attributed to the incorporation of an emotional sentiment enhancement factor for determining weights and leveraging sentiment dictionaries for word availability. The accuracy is obtained to be 92.78% with 91.33% positive sentiment rate and 97.32% negative sentiment rate.