E ISSN: 2583-049X
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International Journal of Advanced Multidisciplinary Research and Studies

Volume 4, Issue 6, 2024

The Role of AI in Cybersecurity: A Cross-Industry Model for Integrating Machine Learning and Data Analysis for Improved Threat Detection



Author(s): Favour Uche Ojika, Wilfred Oseremen Owobu, Olumese Anthony Abieba, Oluwafunmilayo Janet Esan, Bright Chibunna Ubamadu, Andrew Ifesinachi Daraojimba

DOI: https://doi.org/10.62225/2583049X.2024.4.6.4045

Abstract:

The increasing sophistication and frequency of cyberattacks have necessitated advanced approaches to cybersecurity across all sectors. Artificial Intelligence (AI), particularly through machine learning (ML) and data analysis, is emerging as a transformative force in threat detection and response. This paper presents a cross-industry model for integrating AI-driven systems to enhance cybersecurity resilience and operational efficiency. By leveraging supervised and unsupervised machine learning algorithms, the proposed model enables dynamic anomaly detection, real-time threat identification, and predictive risk assessment. The integration of AI with large-scale data analytics allows for the correlation of seemingly unrelated events, thus revealing patterns and behaviors that traditional systems often overlook. The model is designed to be adaptable across industries—including finance, healthcare, manufacturing, and critical infrastructure—where unique security challenges demand tailored solutions. It incorporates a feedback loop mechanism to continuously learn from new threats, thereby improving accuracy and minimizing false positives. Through a modular architecture, the system can be integrated into existing cybersecurity infrastructures without significant overhauls, making it cost-effective and scalable. Emphasis is placed on the use of AI for Security Information and Event Management (SIEM), endpoint protection, and network intrusion detection systems (NIDS). Case studies demonstrate the model's effectiveness in detecting zero-day exploits, phishing attempts, and insider threats in real time, while significantly reducing response time. Furthermore, the use of AI enhances compliance monitoring and supports automated incident response, enabling security teams to focus on strategic tasks. The study also addresses ethical concerns, including data privacy and algorithmic transparency, proposing governance frameworks to ensure responsible AI use. This research underscores the necessity for a unified AI-driven approach to cybersecurity that transcends sectoral boundaries. By adopting a cross-industry model, organizations can collectively strengthen their defenses against the evolving cyber threat landscape. Future work will explore federated learning and privacy-preserving AI to further advance secure, collaborative threat intelligence sharing.


Keywords: Artificial Intelligence, Cybersecurity, Machine Learning, Threat Detection, Data Analysis

Pages: 1427-1448

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