6min chapter

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#114 - Secrets of Deep Reinforcement Learning (Minqi Jiang)

Machine Learning Street Talk (MLST)

CHAPTER

How to Identify Stagnation in an Open Ended Learning Environment

In an open ended learning setting I think we want to constantly be pushing the agent to not be an equilibria with the environment. And so essentially it brings up the interesting question which is how do you know that it's like essentially asymptotically stopped learning? You've lost the potential to be further open ended. A lot of the challenges of continual learning also these automatic curriculum learning methods they are essentially a form of curriculum learning because if you're a self supervised system that's generating new tasks and you basically have the property that the robustness of the agent improves as you train on more and more of these tasks well you're actually in a continual learning setting.

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