On Learning Over-parameterized Neural Networks: A Functional Approximation Perspective
–Neural Information Processing Systems
We consider training over-parameterized two-layer neural networks with Rectified Linear Unit (ReLU) using gradient descent (GD) method. Inspired by a recent line of work, we study the evolutions of network prediction errors across GD iterations, which can be neatly described in a matrix form. When the network is sufficiently over-parameterized, these matrices individually approximate {\em an} integral operator which is determined by the feature vector distribution \rho only. Consequently, GD method can be viewed as {\em approximately} applying the powers of this integral operator on the underlying/target function f * that generates the responses/labels. We show that if f * admits a low-rank approximation with respect to the eigenspaces of this integral operator, then the empirical risk decreases to this low rank approximation error at a linear rate which is determined by f * and \rho only, i.e., the rate is independent of the sample size n .
Neural Information Processing Systems
Oct-9-2024, 16:56:27 GMT
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