International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration method capable of improving the rate of convergence of many optimization schemes such as gradient descend, SAGA or SVRG. Until now, its analysis is limited to convex problems, but empirical observations shows that RNA may be extended to wider settings. In this paper, we investigate further the benefits of RNA when applied to neural networks, in particular for the task of image recognition on CIFAR10 and ImageNet. With very few modifications of exiting frameworks, RNA improves slightly the optimization process of CNNs, after training
The development of deep learning has led to a dramatic increase in the number of applications of art...
The development of deep learning has led to a dramatic increase in the number of applications of art...
This paper aims to accelerate the test-time computation of deep convolutional neural networks (CNNs)...
International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration meth...
International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration meth...
International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration meth...
International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration meth...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
International audienceModern neural networks are over-parametrized. In particular, each rectified li...
International audienceModern neural networks are over-parametrized. In particular, each rectified li...
The development of deep learning has led to a dramatic increase in the number of applications of art...
The development of deep learning has led to a dramatic increase in the number of applications of art...
The development of deep learning has led to a dramatic increase in the number of applications of art...
This paper aims to accelerate the test-time computation of deep convolutional neural networks (CNNs)...
International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration meth...
International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration meth...
International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration meth...
International audienceThe Regularized Nonlinear Acceleration (RNA) algorithm is an acceleration meth...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
Regularized nonlinear acceleration (RNA) is a generic extrapolation scheme for optimization methods,...
International audienceModern neural networks are over-parametrized. In particular, each rectified li...
International audienceModern neural networks are over-parametrized. In particular, each rectified li...
The development of deep learning has led to a dramatic increase in the number of applications of art...
The development of deep learning has led to a dramatic increase in the number of applications of art...
The development of deep learning has led to a dramatic increase in the number of applications of art...
This paper aims to accelerate the test-time computation of deep convolutional neural networks (CNNs)...