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Article Dans Une Revue Procedia Computer Science Année : 2015

Stable Autoencoding: A Flexible Framework for Regularized Low-Rank Matrix Estimation

Résumé

We develop a framework for low-rank matrix estimation that allows us to transform noise models into regularization schemes via a simple parametric bootstrap. Effectively, our procedure seeks an autoencoding basis for the observed matrix that is robust with respect to the specified noise model. In the simplest case, with an isotropic noise model, our procedure is equivalent to a classical singular value shrinkage estimator. For non-isotropic noise models, however, our method does not reduce to singular value shrinkage, and instead yields new estimators that perform well in experiments. Moreover, by iterating our stable autoencoding scheme, we can automatically generate low-rank estimates without specifying the target rank as a tuning parameter.

Dates et versions

hal-01148810 , version 1 (05-05-2015)

Identifiants

Citer

Julie Josse, Stefan Wager. Stable Autoencoding: A Flexible Framework for Regularized Low-Rank Matrix Estimation. Procedia Computer Science, 2015, 51, pp.2406. ⟨10.1016/j.procs.2015.05.420⟩. ⟨hal-01148810⟩
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