Falsifiable implies Learnable

Abstract

The paper demonstrates that falsifiability is fundamental to learning. We prove the following theorem for statistical learning and sequential prediction: If a theory is falsifiable then it is learnable -- i.e. admits a strategy that predicts optimally. An analogous result is shown for universal induction.

Author's Profile

David Balduzzi
University of Zürich

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Added to PP
2014-12-20

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