LGNEMLOct 4, 2018

A Convergence Analysis of Gradient Descent for Deep Linear Neural Networks

arXiv:1810.02281v3348 citations
Originality Incremental advance
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This provides theoretical guarantees for training deep linear networks, addressing convergence issues in optimization for researchers and practitioners.

The paper analyzes the convergence of gradient descent for deep linear neural networks, proving linear convergence to global optimum under specific initialization conditions, and shows these conditions are necessary and hold with constant probability for scalar regression.

We analyze speed of convergence to global optimum for gradient descent training a deep linear neural network (parameterized as $x \mapsto W_N W_{N-1} \cdots W_1 x$) by minimizing the $\ell_2$ loss over whitened data. Convergence at a linear rate is guaranteed when the following hold: (i) dimensions of hidden layers are at least the minimum of the input and output dimensions; (ii) weight matrices at initialization are approximately balanced; and (iii) the initial loss is smaller than the loss of any rank-deficient solution. The assumptions on initialization (conditions (ii) and (iii)) are necessary, in the sense that violating any one of them may lead to convergence failure. Moreover, in the important case of output dimension 1, i.e. scalar regression, they are met, and thus convergence to global optimum holds, with constant probability under a random initialization scheme. Our results significantly extend previous analyses, e.g., of deep linear residual networks (Bartlett et al., 2018).

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