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Learning curves of generic features maps for realistic datasets with a teacher-student model*

Bruno Loureiro, Cédric Gerbelot, Hugo Cui, Sebastian Goldt, Florent Krząkała, Marc Mézard, Lenka Zdeborová

2022Journal of Statistical Mechanics Theory and Experiment58 citationsDOIOpen Access PDF

Abstract

Abstract Teacher-student models provide a framework in which the typical-case performance of high-dimensional supervised learning can be described in closed form. The assumptions of Gaussian i.i.d. input data underlying the canonical teacher-student model may, however, be perceived as too restrictive to capture the behaviour of realistic data sets. In this paper, we introduce a Gaussian covariate generalisation of the model where the teacher and student can act on different spaces, generated with fixed, but generic feature maps. While still solvable in a closed form, this generalization is able to capture the learning curves for a broad range of realistic data sets, thus redeeming the potential of the teacher-student framework. Our contribution is then two-fold: first, we prove a rigorous formula for the asymptotic training loss and generalisation error. Second, we present a number of situations where the learning curve of the model captures the one of a realistic data set learned with kernel regression and classification, with out-of-the-box feature maps such as random projections or scattering transforms, or with pre-learned ones—such as the features learned by training multi-layer neural networks. We discuss both the power and the limitations of the framework.

Topics & Concepts

GeneralizationFeature (linguistics)Computer scienceRange (aeronautics)GaussianSet (abstract data type)Kernel (algebra)Machine learningArtificial intelligenceGaussian processArtificial neural networkCovariateAlgorithmPattern recognition (psychology)MathematicsDiscrete mathematicsPhysicsProgramming languageComposite materialMathematical analysisPhilosophyQuantum mechanicsLinguisticsMaterials scienceGaussian Processes and Bayesian InferenceStatistical Methods and InferenceBayesian Methods and Mixture Models
Learning curves of generic features maps for realistic datasets with a teacher-student model* | Litcius