0113ef4642264adc2e6924a3cbbdf532-Paper-Conference.pdf
–Neural Information Processing Systems
Strong inductive biases give humans the ability to quickly learn to perform a variety of tasks. Although meta-learning is a method to endow neural networks with useful inductive biases, agents trained by meta-learning may sometimes acquire very different strategies from humans. We show that co-training these agents on predicting representations from natural language task descriptions and programs induced to generate such tasks guides them toward more humanlike inductive biases. Human-generated language descriptions and program induction models that add new learned primitives both contain abstract concepts that can compress description length. Co-training on these representations result in more human-like behavior in downstream meta-reinforcement learning agents than less abstract controls (synthetic language descriptions, program induction without learned primitives), suggesting that the abstraction supported by these representations is key.
Neural Information Processing Systems
Feb-18-2024, 04:16:14 GMT
- Country:
- North America > United States (0.14)
- Genre:
- Research Report
- Experimental Study (0.47)
- New Finding (0.47)
- Research Report
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- Education (0.34)
- Health & Medicine (0.46)
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