5min chapter

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

Machine Learning Street Talk (MLST)

CHAPTER

How to Overcome the Convergent Nature of Your Data Distribution

We don't want our model to get stuck in a local minimum. We want it to kind of continue to accumulate this information. In an open-ended learning setting, if you reach an equilibrium, you basically stop learning. And we want to essentially have a way to constantly push the agent out of the equilibrium towards learning new things. The maze environments are often one example where we find that in the limit the agent actually just learns a very simple policy.

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