The aim of this paper is to introduce two widely applicable regularization methods based on the direct modification of weight matrices. The first method, Weight Reinitialization, utilizes a simplified Bayesian assumption with partially resetting a sparse subset of the parameters. The second one, Weight Shuffling, introduces an entropy- and weight distribution-invariant non-white noise to the parameters. The latter can also be interpreted as an ensemble approach. The proposed methods are evaluated on benchmark datasets, such as MNIST, CIFAR-10 or the JSB Chorales database, and also on time series modeling tasks. We report gains both regarding performance and entropy of the analyzed networks. We also made our code available as a GitHub reposi...
Injecting noise within gradient descent has several desirable features. In this paper, we explore no...
This work addresses meta-learning (ML) by considering deep networks with stochastic local winner-tak...
Over-parametrization of deep neural networks has recently been shown to be key to their successful t...
The aim of this paper is to introduce two widely applicable regularization methods based on the dire...
For flexible and overparameterised models like neural networks, overfitting can be a notorious probl...
Regularization is essential when training large neural networks. As deep neural networks can be math...
Abstract We present weight normalization: a reparameterization of the weight vectors in a neural net...
The classical statistical learning theory implies that fitting too many parameters leads to overfitt...
© Copyright 2016, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Rannen Ep Triki A., Blaschko M., ''Stochastic function norm regularization of DNNs'', 9th NIPS works...
Recent years have witnessed the success of deep neural networks in dealing with a plenty of practica...
We introduce a simple and effective method for regularizing large convolutional neural networks. We ...
Multiplicative stochasticity such as Dropout improves the robustness and generalizability of deep ne...
International audienceWe investigate deep Bayesian neural networks with Gaussian priors on the weigh...
Ensemble methods of machine learning combine neural networks or other machine learning models in ord...
Injecting noise within gradient descent has several desirable features. In this paper, we explore no...
This work addresses meta-learning (ML) by considering deep networks with stochastic local winner-tak...
Over-parametrization of deep neural networks has recently been shown to be key to their successful t...
The aim of this paper is to introduce two widely applicable regularization methods based on the dire...
For flexible and overparameterised models like neural networks, overfitting can be a notorious probl...
Regularization is essential when training large neural networks. As deep neural networks can be math...
Abstract We present weight normalization: a reparameterization of the weight vectors in a neural net...
The classical statistical learning theory implies that fitting too many parameters leads to overfitt...
© Copyright 2016, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Rannen Ep Triki A., Blaschko M., ''Stochastic function norm regularization of DNNs'', 9th NIPS works...
Recent years have witnessed the success of deep neural networks in dealing with a plenty of practica...
We introduce a simple and effective method for regularizing large convolutional neural networks. We ...
Multiplicative stochasticity such as Dropout improves the robustness and generalizability of deep ne...
International audienceWe investigate deep Bayesian neural networks with Gaussian priors on the weigh...
Ensemble methods of machine learning combine neural networks or other machine learning models in ord...
Injecting noise within gradient descent has several desirable features. In this paper, we explore no...
This work addresses meta-learning (ML) by considering deep networks with stochastic local winner-tak...
Over-parametrization of deep neural networks has recently been shown to be key to their successful t...