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Nonparametric regression on low-dimensional manifolds using deep ReLU networks: function approximation and statistical recovery

Minshuo Chen, Haoming Jiang, Wenjing Liao, Tuo Zhao

2022Information and Inference A Journal of the IMA16 citationsDOIOpen Access PDF

Abstract

Abstract Real-world data often exhibit low-dimensional geometric structures and can be viewed as samples near a low-dimensional manifold. This paper studies nonparametric regression of Hölder functions on low-dimensional manifolds using deep Rectified Linear Unit (ReLU) networks. Suppose $n$ training data are sampled from a Hölder function in $\mathcal{H}^{\ s,\alpha }$ supported on a $d$-dimensional Riemannian manifold isometrically embedded in $\mathbb{R}^D$. A deep ReLU network architecture is designed to estimate the underlying function from the training data. The mean squared error of the empirical estimator is proved to converge in the order of $n^{-\frac{2(s+\alpha )}{2(s+\alpha ) + d}}\log ^3 n$. This result shows that deep ReLU networks give rise to a fast convergence rate depending on the data intrinsic dimension $d$, which is usually much smaller than the ambient dimension $D$. It therefore demonstrates the adaptivity of deep ReLU networks to low-dimensional geometric structures in data and partially explains the power of deep ReLU networks in tackling high-dimensional data with low-dimensional geometric structures.

Topics & Concepts

Dimension (graph theory)Nonparametric regressionNonparametric statisticsEstimatorManifold (fluid mechanics)Function (biology)MathematicsGaussianDeep learningAlgorithmComputer sciencePure mathematicsArtificial intelligenceStatisticsPhysicsEngineeringEvolutionary biologyQuantum mechanicsMechanical engineeringBiologyGenerative Adversarial Networks and Image SynthesisGaussian Processes and Bayesian InferenceNeural Networks and Applications
Nonparametric regression on low-dimensional manifolds using deep ReLU networks: function approximation and statistical recovery | Litcius