IEEE Computational Intelligence Magazine | 2019

QoE-Driven Content-Centric Caching With Deep Reinforcement Learning in Edge-Enabled IoT

 
 
 

Abstract


When humans learn several skills to solve multiple tasks, they exhibit an extraordinary capacity to transfer knowledge between them. The authors present here the last enhanced version of a bioinspired reinforcement-learning (RL) modular architecture able to perform skill-to-skill knowledge transfer and called transfer expert RL (TERL) model. TERL architecture is based on a RL actor-critic model where both actor and critic have a hierarchical structure, inspired by the mixture-of-experts model, formed by a gating network that selects experts specializing in learning the policies or value functions of different tasks. A key feature of TERL is the capacity of its gating networks to accumulate, in parallel, evidence on the capacity of experts to solve the new tasks so as to increase the responsibility for action of the best ones. A second key feature is the use of two different responsibility signals for the experts functioning and learning: this allows the training of multiple experts for each task so that some of them can be later recruited to solve new tasks and avoid catastrophic interference. The utility of TERL mechanisms is shown with tests involving two simulated dynamic robot arms engaged in solving reaching tasks, in particular a planar 2-DoF arm, and a 3-D 4-DoF arm.

Volume 14
Pages 12-20
DOI 10.1109/MCI.2019.2937608
Language English
Journal IEEE Computational Intelligence Magazine

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