Published Jan 28, 2023
#97 SREEJAN KUMAR - Human Inductive Biases in Machines from Language
Sreejan Kumar discusses the integration of human inductive biases in AI using program synthesis and meta-learning, aiming to boost AI's generalization and human-like efficiency. His research sheds light on aligning AI more closely with human cognitive processes through natural language and program abstractions, as highlighted in his NeurIPS presentation.

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