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Most Influential AISTATS 2010 Paper · 2026-03 edition

Noise-contrastive Estimation: A New Estimation Principle For Unnormalized Statistical Models

Michael Gutmann; Aapo Hyv�rinen

Venue
Conference on Artificial Intelligence and Statistics (AISTATS) 2010
Recognition
Most Influential AISTATS 2010 Paper (Rank No. 2)
Edition
2026-03
Impact factor
9
Certificate ID
bdc823054a03832a

Abstract

We present a new estimation principle for parameterized statistical models. The idea is to perform nonlinear logistic regression to discriminate between the observed data and some artificially generated noise, using the model log-density function in the regression nonlinearity. We show that this leads to a consistent (convergent) estimator of the parameters, and analyze the asymptotic variance. In particular, the method is shown to directly work for unnormalized models, i.e. models where the density function does not integrate to one. The normalization constant can be estimated just like any other parameter. For a tractable ICA model, we compare the method with other estimation methods that can be used to learn unnormalized models, including score matching, contrastive divergence, and maximum-likelihood where the normalization constant is estimated with importance sampling. Simulations show that noise-contrastive estimation offers the best trade-off between computational and statistical efficiency. The method is then applied to the modeling of natural images: We show that the method can successfully estimate a large-scale two-layer model and a Markov random field.

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