LGNEMLMar 19, 2015

Optimizing Neural Networks with Kronecker-factored Approximate Curvature

arXiv:1503.05671v71336 citations
AI Analysis

This work addresses the challenge of optimizing neural networks more efficiently for machine learning practitioners, though it is incremental as it builds on existing natural-gradient methods.

The authors tackled the problem of efficiently approximating natural gradient descent in neural networks by proposing Kronecker-Factored Approximate Curvature (K-FAC), which results in an algorithm that is much faster than stochastic gradient descent with momentum in practice.

We propose an efficient method for approximating natural gradient descent in neural networks which we call Kronecker-Factored Approximate Curvature (K-FAC). K-FAC is based on an efficiently invertible approximation of a neural network's Fisher information matrix which is neither diagonal nor low-rank, and in some cases is completely non-sparse. It is derived by approximating various large blocks of the Fisher (corresponding to entire layers) as being the Kronecker product of two much smaller matrices. While only several times more expensive to compute than the plain stochastic gradient, the updates produced by K-FAC make much more progress optimizing the objective, which results in an algorithm that can be much faster than stochastic gradient descent with momentum in practice. And unlike some previously proposed approximate natural-gradient/Newton methods which use high-quality non-diagonal curvature matrices (such as Hessian-free optimization), K-FAC works very well in highly stochastic optimization regimes. This is because the cost of storing and inverting K-FAC's approximation to the curvature matrix does not depend on the amount of data used to estimate it, which is a feature typically associated only with diagonal or low-rank approximations to the curvature matrix.

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