3min chapter

Machine Learning Street Talk (MLST) cover image

Harri Valpola: System 2 AI and Planning in Model-Based Reinforcement Learning

Machine Learning Street Talk (MLST)

CHAPTER

The Problem of Planning in a Neural Network

In traditional model base reenforcement learning, planning is done by computing the expected result of a sequence of future actions using an explicit model of the environment. The key problem in in using these learned networks is that the planning isshoots off immediately out of the familiar, familiar manifold,. Then then the network can give complete rubbish. We we've found a way to to train a neural network a denosing outer incorder to effectively figure out what the training distribution is and give the gradients that point uphill in this er probability tion of the training, training data. And that that's the antidote against this adversaria planning attack.

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