Does Preprocessing Help Training Over-parameterized Neural Networks?
Abstract
Deep neural networks have achieved impressive performance in many areas. Designing a fast and provable method for training neural networks is a fundamental question in machine learning. The classical training method requires paying (mnd) cost for both forward computation and backward computation, where m is the width of the neural network, and we are given n training points in d-dimensional space. In this paper, we propose two novel preprocessing ideas to bypass this (mnd) barrier: First, by preprocessing the initial weights of the neural networks, we can train the neural network in O(m1-(1/d) n d) cost per iteration. Second, by preprocessing the input data points, we can train the neural network in O (m4/5 nd ) cost per iteration. From the technical perspective, our result is a sophisticated combination of tools in different fields, greedy-type convergence analysis in optimization, sparsity observation in practical work, high-dimensional geometric search in data structure, concentration and anti-concentration in probability. Our results also provide theoretical insights for a large number of previously established fast training methods. In addition, our classical algorithm can be generalized to the Quantum computation model. Interestingly, we can get a similar sublinear cost per iteration but avoid preprocessing initial weights or input data points.
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