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Algorithm Table

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Deep Reinforcement Learning
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Abstract

In this chapter, we summarize the references of some important reinforcement learning algorithms introduced in the book as a table.

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Correspondence to Zihan Ding .

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Ding, Z. (2020). Algorithm Table. In: Dong, H., Ding, Z., Zhang, S. (eds) Deep Reinforcement Learning. Springer, Singapore. https://doi.org/10.1007/978-981-15-4095-0_19

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