3min chapter

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#97 SREEJAN KUMAR - Human Inductive Biases in Machines from Language

Machine Learning Street Talk (MLST)

CHAPTER

How to Predict the Roberta Embedding in a Language Model?

The researchers used a language model to represent utterances in a vector space. They then fed that into the training program, which was based on human priors and machine priors. If you train an RL agent on the human-generated task, it will actually generalize better to the machine-generated task than the human- generated task. And so if you co-train on representations with compressive abstractions, then you get more human-like behavior.

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