Natural gradient learning is an efficient and principled method for improving online learning. In practical applications there will be an increased cost required in estimating and inverting the Fisher information matrix. We propose to use the matrix momentum algorithm in order to carry out efficient inversion and study the efficacy of a single step estimation of the Fisher information matrix. We analyse the proposed algorithms in a two-layer neural network, using a statistical mechanics framework which allows one to describe analytically the learning dynamics, and compare performance with true natural gradient learning and standard gradient descent.
Natural gradient matrix momentum
SCARPETTA, Silvia;
1999-01-01
Abstract
Natural gradient learning is an efficient and principled method for improving online learning. In practical applications there will be an increased cost required in estimating and inverting the Fisher information matrix. We propose to use the matrix momentum algorithm in order to carry out efficient inversion and study the efficacy of a single step estimation of the Fisher information matrix. We analyse the proposed algorithms in a two-layer neural network, using a statistical mechanics framework which allows one to describe analytically the learning dynamics, and compare performance with true natural gradient learning and standard gradient descent.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.