Simultaneously Evolving Deep Reinforcement Learning Models using Multifactorial optimization

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11 Citas (Scopus)

Resumen

In recent years, Multifactorial optimization (MFO) has gained a notable momentum in the research community. MFO is known for its inherent capability to efficiently address multiple optimization tasks at the same time, while transferring information among such tasks to improve their convergence speed. On the other hand, the quantum leap made by Deep Q Learning (DQL) in the Machine Learning field has allowed facing Reinforcement Learning (RL) problems of unprecedented complexity. Unfortunately, complex DQL models usually find it difficult to converge to optimal policies due to the lack of exploration or sparse rewards. In order to overcome these drawbacks, pre-trained models are widely harnessed via Transfer Learning, extrapolating knowledge acquired in a source task to the target task. Besides, meta-heuristic optimization has been shown to reduce the lack of exploration of DQL models. This work proposes a MFO framework capable of simultaneously evolving several DQL models towards solving interrelated RL tasks. Specifically, our proposed framework blends together the benefits of meta-heuristic optimization, Transfer Learning and DQL to automate the process of knowledge transfer and policy learning of distributed RL agents. A thorough experimentation is presented and discussed so as to assess the performance of the framework, its comparison to the traditional methodology for Transfer Learning in terms of convergence, speed and policy quality, and the intertask relationships found and exploited over the search process.

Idioma originalInglés
Título de la publicación alojada2020 IEEE Congress on Evolutionary Computation, CEC 2020 - Conference Proceedings
EditorialInstitute of Electrical and Electronics Engineers Inc.
ISBN (versión digital)9781728169293
DOI
EstadoPublicada - jul 2020
Evento2020 IEEE Congress on Evolutionary Computation, CEC 2020 - Virtual, Glasgow, Reino Unido
Duración: 19 jul 202024 jul 2020

Serie de la publicación

Nombre2020 IEEE Congress on Evolutionary Computation, CEC 2020 - Conference Proceedings

Conferencia

Conferencia2020 IEEE Congress on Evolutionary Computation, CEC 2020
País/TerritorioReino Unido
CiudadVirtual, Glasgow
Período19/07/2024/07/20

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