Title
Optimal Approximation With Sparsely Connected Deep Neural Networks
Abstract
We derive fundamental lower bounds on the connectivity and the memory requirements of deep neural networks guaranteeing uniform approximation rates for arbitrary function classes in L-2(R-d). In other words, we establish a connection between the complexity of a function class and the complexity of deep neural networks approximating functions from this class to within a prescribed accuracy. Additionally, we prove that our lower bounds are achievable for a broad family of function classes. Specifically, all function classes that are optimally approximated by a general class of representation systems-so-called affine systems-can be approximated by deep neural networks with minimal connectivity and memory requirements. Affine systems encompass a wealth of representation systems from applied harmonic analysis such as wavelets, ridgelets, curvelets, shearlets, alpha-shearlets, and, more generally, alpha-molecules. Our central result elucidates a remarkable universality property of neural networks and shows that they achieve the optimum approximation properties of all affine systems combined. As a specific example, we consider the class of alpha(-1)-cartoon-like functions, which is approximated optimally by alpha-shearlets. We also explain how our results can be extended to the approximation of functions on low-dimensional immersed manifolds. Finally, we present numerical experiments demonstrating that the standard stochastic gradient descent algorithm yields deep neural networks with close-to-optimal approximation rates. Moreover, these results indicate that stochastic gradient descent can learn approximations that are sparse in the representation systems optimally sparsifying the function class the network is trained on.
Year
DOI
Venue
2017
10.1137/18M118709X
SIAM JOURNAL ON MATHEMATICS OF DATA SCIENCE
Keywords
Field
DocType
neural networks, function approximation, optimal sparse approximation, sparse connectivity, wavelets, shearlets
Affine transformation,Stochastic gradient descent,Minimax approximation algorithm,Shearlet,Artificial intelligence,Universality (philosophy),Artificial neural network,Manifold,Mathematics,Machine learning,Wavelet
Journal
Volume
Issue
Citations 
1
1
17
PageRank 
References 
Authors
0.84
12
4
Name
Order
Citations
PageRank
Helmut Bölcskei196965.85
Philipp Grohs216219.49
Gitta Kutyniok332534.77
philipp petersen4503.92