Los puntos clave no están disponibles para este artículo en este momento.
In the labyrinthine world of cybersecurity, the ever-evolving specter of cyber-attacks offers an inevitable challenge to the fortifications of protection measures. Past investigations have underlined the exigency for adaptive and aggressive strategies in the arena of cyber defense, with a conspicuous lacuna in leveraging advanced machine learning paradigms for real-time threat discernment and neutralization. In response to this gap, our investigation strives to probe the depths of deep reinforcement learning (DRL) efficacy in the domain of adaptive cyber protection. Imbibing the essence of cutting-edge DRL techniques such as Deep Q-Networks (DQN), Proximal Policy Optimization (PPO), and Twin Delayed Deep Deterministic Policy Gradient (TD3), we fashioned a revolutionary schema tailored towards parsing and fighting cyber threats in real-time. Our expedition traversed the terra incognita of a comprehensive dataset, teeming with varied cyber threat scenarios covering the gamut from malware invasions to phishing machinations, intrusion intrusions, and adversarial assaults, to incubate and examine the performance of our DRL models. Through a crucible of extensive experimentation, we unfurl promising ensigns, with our algorithms evincing a lofty accuracy and effectiveness quotient in the classification and abatement of cyber threats. This research purports to accelerate the vanguard of cyber defense by exposing the latent potential of DRL in sculpting adaptive and robust bulwarks against the unrelenting tide of developing cyber threats.
Hammad et al. (Sat,) studied this question.