Ambiguous Model Learning Made Unambiguous with 1/f Priors

Part of Advances in Neural Information Processing Systems 16 (NIPS 2003)

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Authors

Gurinder Atwal, William Bialek

Abstract

What happens to the optimal interpretation of noisy data when there exists more than one equally plausible interpretation of the data? In a Bayesian model-learning framework the answer depends on the prior ex- pectations of the dynamics of the model parameter that is to be inferred from the data. Local time constraints on the priors are insufficient to pick one interpretation over another. On the other hand, nonlocal time constraints, induced by a 1/f noise spectrum of the priors, is shown to permit learning of a specific model parameter even when there are in- finitely many equally plausible interpretations of the data. This transition is inferred by a remarkable mapping of the model estimation problem to a dissipative physical system, allowing the use of powerful statisti- cal mechanical methods to uncover the transition from indeterminate to determinate model learning.