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A Hybrid Mathematical Framework for Dynamic Incident Prioritization Using Fuzzy Q-Learning and Text Analytics

Author

Listed:
  • Arturo Peralta

    (Escuela Superior de Ingeniería, Universidad Internacional de Valencia, Calle Pintor Sorolla, 21, 46002 Valencia, Spain
    Escuela Superior de Ingeniería y Tecnología, Universidad Internacional de La Rioja, Avda. de la Paz 93-103, 26006 Logroño, Spain
    Departamento de Tecnología y Sistemas de Información, Universidad de Castilla-La Mancha, Paseo de la Universidad, 4, 13071 Ciudad Real, Spain)

  • José A. Olivas

    (Departamento de Tecnología y Sistemas de Información, Universidad de Castilla-La Mancha, Paseo de la Universidad, 4, 13071 Ciudad Real, Spain)

  • Pedro Navarro-Illana

    (Escuela de Doctorado, Tech Universidad Tecnológica, Av. Taco, 164, 38108 La Laguna, Spain)

  • Juan Alvarado

    (Escuela de Doctorado, Tech Universidad Tecnológica, Av. Taco, 164, 38108 La Laguna, Spain
    Facultad de Pedagogía, Universidad Virtual del Estado de Guanajuato, Hermenegildo Bustos 129 A Sur, Col. Centro, Purísima del Rincón 36400, Guanajuato, Mexico)

Abstract

This paper presents a hybrid framework for dynamic incident prioritization in enterprise environments, combining fuzzy logic, natural language processing, and reinforcement learning. The proposed system models incident descriptions through semantic embeddings derived from advanced text analytics, which serve as state representations within a fuzzy Q-learning model. Severity and urgency are encoded as fuzzy variables, enabling the prioritization process to manage linguistic vagueness and operational uncertainty. A mathematical formulation of the fuzzy Q-learning algorithm is developed, including fuzzy state definition, reward function design, and convergence analysis. The system continuously updates its prioritization policy based on real-time feedback, adapting to evolving patterns in incident reports and resolution outcomes. Experimental evaluation on a dataset of 10,000 annotated incident descriptions demonstrates improved prioritization accuracy, particularly for ambiguous or borderline cases, and reveals a 19% performance gain over static fuzzy and deep learning-based baselines. The results validate the effectiveness of integrating fuzzy inference and reinforcement learning in incident management tasks requiring adaptability, transparency, and mathematical robustness.

Suggested Citation

  • Arturo Peralta & José A. Olivas & Pedro Navarro-Illana & Juan Alvarado, 2025. "A Hybrid Mathematical Framework for Dynamic Incident Prioritization Using Fuzzy Q-Learning and Text Analytics," Mathematics, MDPI, vol. 13(12), pages 1-27, June.
  • Handle: RePEc:gam:jmathe:v:13:y:2025:i:12:p:1941-:d:1676587
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