核心概念
Escalating challenges of redundant data transmission in networks are addressed through a novel approach combining Deep Reinforcement Learning and Transfer Learning for edge caching optimization.
統計
"Existing caching schemes can be categorized as reactive and proactive [4], [5]."
"The proposed TL approach exhibits fast convergence, even in scenarios with increased differences in request rates between source and target domains."
引用
"The surge in traffic has strained backhaul links and backbone networks, prompting the exploration of caching solutions at the edge router."
"Simulation results demonstrate the superior performance of our approach compared to a recent Deep Reinforcement Learning-based method."