TL-RL-FusionNet: An Adaptive and Efficient Reinforcement Learning-Driven Transfer Learning Framework for Detecting Evolving Ransomware Threats
Jannatul Ferdous, Rafiqul Islam, Arash Mahboubi, Md Zahidul Islam

TL;DR
TL-RL-FusionNet is an adaptive reinforcement learning framework that enhances ransomware detection by dynamically reweighting samples and leveraging transfer learning with efficient feature extraction.
Contribution
It introduces a novel RL-guided hybrid model combining transfer learning backbones with a lightweight classifier for evolving ransomware detection.
Findings
Achieves 99.1% accuracy and 98.6% precision on a balanced dataset.
Outperforms non-RL baselines by up to 2.5% in accuracy.
Reduces training time by 55% and RAM usage by 59%.
Abstract
Modern ransomware exhibits polymorphic and evasive behaviors by frequently modifying execution patterns to evade detection. This dynamic nature disrupts feature spaces and limits the effectiveness of static or predefined models. To address this challenge, we propose TL-RL-FusionNet, a reinforcement learning (RL)-guided hybrid framework that integrates frozen dual transfer learning (TL) backbones as feature extractors with a lightweight residual multilayer perceptron (MLP) classifier. The RL agent supervises training by adaptively reweighting samples in response to variations in observable ransomware behavior. Through reward and penalty signals, the agent prioritizes complex cases such as stealthy or polymorphic ransomware employing obfuscation, while down-weighting trivial samples including benign applications with simple file I/O operations or easily classified ransomware. This…
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