Towards Knowledge Transfer in Deep Reinforcement Learning
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Abstract
Driven by recent developments in the area of Artificial Intelligence research, a promising new technology for building intelligent agents has evolved. The technology is termed Deep Reinforcement Learning (DRL) and combines the classic field of Reinforcement Learning (RL) with the representational power of modern Deep Learning approaches. DRL enables solutions for difficult and high dimensional tasks, such as Atari game playing, for which previously proposed RL methods wereinadequate. However, these new olution approaches still take a long time to learn how to actuate in such domains and so farare mainly researched for single task cenarios. The ability to generalize gathered knowledge and transfer it to another task has been researched for classical RL, but remains an open problem for the DRL domain. Consequently, in this article we evaluate under which conditions the application of Transfer Learning (TL) to the DRL domain improves the learning of a new task. Our results indicate that TL can greatly accelerate DRL when transferring knowledge from similar tasks, and that the similarity between tasks plays a key role in the success or failure of knowledge transfer.
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GLATT, Ruben; LENO DA SILVA, Felipe; HELENA REALI COSTA, Anna.
Towards Knowledge Transfer in Deep Reinforcement Learning.
BRACIS, [S.l.], july 2017.
Available at: <http://250154.o0gct.group/index.php/bracis/article/view/95>. Date accessed: 28 nov. 2024.
doi: https://doi.org/10.1235/bracis.vi.95.
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