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Fuzzy SVM With Mahalanobis Distance for Situational Awareness-Based Recognition of Public Health Emergencies

Author

Listed:
  • Dan Li

    (Zhejiang College, Shanghai University of Finance and Economics, China)

  • Zheng Qu

    (Shanghai Business School, China)

  • Chen Lyu

    (Shanghai University of Finance and Economics, China)

  • Luping Zhang

    (Zhejiang College, Shanghai University of Finance and Economics, China)

  • Wenjin Zuo

    (Zhejiang College, Shanghai University of Finance and Economics, China)

Abstract

In public health emergencies, situational awareness is crucial for swift responses by governments and rescue organizations. In this manuscript, a novel framework is proposed to identify and classify event-specific information, aiming to comprehend concepts, characteristics, and classifications associated with situational awareness in social media emergencies. First, a statistical approach is employed to extract a set of standard features. Second, a category-based latent dirichlet allocation to vector (LDA2vec) model is leveraged to extract topic-based features to enhance accuracy, particularly for unbalanced datasets. Finally, a fuzzy support vector machine (FSVM) classifier utilizing the Mahalanobis distance kernel is introduced to improve the detection accuracy of event-specific information. The framework's effectiveness is evaluated using the social media public health dataset, achieving superior filtering capabilities for non-informative data with a precision of 89% and an F1-Score of 91%, surpassing other standard methods.

Suggested Citation

  • Dan Li & Zheng Qu & Chen Lyu & Luping Zhang & Wenjin Zuo, 2024. "Fuzzy SVM With Mahalanobis Distance for Situational Awareness-Based Recognition of Public Health Emergencies," International Journal of Fuzzy System Applications (IJFSA), IGI Global, vol. 13(1), pages 1-21, January.
  • Handle: RePEc:igg:jfsa00:v:13:y:2024:i:1:p:1-21
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