ANALYSIS OF INFORMATION TECHNOLOGIES AND METHODS FOR AUTOMATIC UPDATING OF THREAT DETECTION MODELS IN COMPUTER SYSTEMS

Authors

DOI:

https://doi.org/10.31891/csit-2026-1-16

Keywords:

computer systems, threat detection, machine learning, information technology, automatic update

Abstract

The development of intelligent adaptive information technologies for automatic updating of threat detection models in computer systems is one of the most important directions in modern research on information technologies. Computer systems today operate in environments that are constantly changing, influenced by new software, evolving hardware, and diverse data processing methods. Traditional static approaches, which rely on fixed rules or predefined models, often become outdated quickly and fail to provide the necessary adaptability.

Existing approaches to detection in computer systems have been studied extensively, and while they provide valuable insights, they also demonstrate clear limitations. Signature-based methods depend heavily on known patterns and therefore struggle to identify new or unexpected phenomena. Heuristic analysis allows for broader generalization but is frequently associated with high rates of false positives, which reduces its practical usefulness. Behavioral monitoring can capture dynamic changes in system activity, yet it requires significant computational resources and may slow down performance. Machine learning models offer adaptability and the ability to learn from data, but they demand large amounts of training information and careful tuning to avoid errors. Hybrid approaches attempt to combine the strengths of multiple techniques, but they often face difficulties in seamless integration and optimization within existing infrastructures.

Because of these limitations, researchers are increasingly focused on developing frameworks that incorporate automatic updating mechanisms. Such frameworks are designed to be self-adaptive, meaning they can evolve continuously in response to new conditions without requiring manual intervention. Real-time adaptation is a central feature of these systems, enabling them to improve accuracy, reduce false positives, and optimize the use of computational resources.

By integrating intelligent updating mechanisms, information infrastructures can achieve higher levels of stability and efficiency. This not only enhances the overall performance of computer systems but also ensures that they remain relevant and effective in environments where change is constant. The ability to evolve automatically, without relying on outdated static methods, positions these technologies as a cornerstone of future developments in information systems.

The continuous evolution of computational environments demands solutions that are flexible, intelligent, and capable of real-time adaptation. By embracing adaptive frameworks, researchers and developers can create systems that are not only more accurate and efficient but also more resilient and scalable. This marks a decisive step toward the next generation of computer systems, where adaptability and automation are essential for long-term reliability and success.

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Published

2026-03-26

How to Cite

ISAIEV, T., & ATAMANIUK, O. (2026). ANALYSIS OF INFORMATION TECHNOLOGIES AND METHODS FOR AUTOMATIC UPDATING OF THREAT DETECTION MODELS IN COMPUTER SYSTEMS. Computer Systems and Information Technologies, (1), 172–185. https://doi.org/10.31891/csit-2026-1-16