We study the dynamics and equilibria induced by training an artificial neural network for regression based on the gradient conjugate prior (GCP) updates. We show that contaminating the training data set by outliers leads to bifurcation of a stable equilibrium from infinity. Furthermore, using the outputs of the GCP network at the equilibrium, we derive an explicit formula for correcting the learned variance of the marginal distribution and removing the bias caused by outliers in the training set. Assuming a Gaussian (input-dependent) ground truth distribution contaminated with a proportion ϵ of outliers, we show that the fitted mean is in a ce 1/ϵ -neighborhood of the ground truth mean and the corrected variance is in a b\ϵ -neighborhood of...
Improving adversarial robustness of neural networks remains a major challenge. Fundamentally, traini...
Learning in uncertain, noisy, or adversarial environments is a challenging task for deep neural netw...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...
The paper deals with learning probability distributions of observed data by artificial neural networ...
Large outliers break down linear and nonlinear regression models. Robust regression methods allow on...
Large outliers break down linear and nonlinear regression models. Robust regres-sion methods allow o...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
Most supervised neural networks are trained by minimizing the mean square error (MSE) of the trainin...
International audienceIn this paper we address the problem of how to robustly train a Con-vNet for r...
Learning the structure of real world data is difficult both to recognize and describe. The structure...
Learning in uncertain, noisy, or adversarial environments is a challenging task for deep neural netw...
We consider sequential or online learning in dynamic neural regression models. By using a state spac...
In several fields, as industrial modelling, multilayer feedforward neural networks are often used as...
International audienceRobustness of deep neural networks is a critical issue in practical applicatio...
Deep learning has seen tremendous growth, largely fueled by more powerful computers, the availabilit...
Improving adversarial robustness of neural networks remains a major challenge. Fundamentally, traini...
Learning in uncertain, noisy, or adversarial environments is a challenging task for deep neural netw...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...
The paper deals with learning probability distributions of observed data by artificial neural networ...
Large outliers break down linear and nonlinear regression models. Robust regression methods allow on...
Large outliers break down linear and nonlinear regression models. Robust regres-sion methods allow o...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
Most supervised neural networks are trained by minimizing the mean square error (MSE) of the trainin...
International audienceIn this paper we address the problem of how to robustly train a Con-vNet for r...
Learning the structure of real world data is difficult both to recognize and describe. The structure...
Learning in uncertain, noisy, or adversarial environments is a challenging task for deep neural netw...
We consider sequential or online learning in dynamic neural regression models. By using a state spac...
In several fields, as industrial modelling, multilayer feedforward neural networks are often used as...
International audienceRobustness of deep neural networks is a critical issue in practical applicatio...
Deep learning has seen tremendous growth, largely fueled by more powerful computers, the availabilit...
Improving adversarial robustness of neural networks remains a major challenge. Fundamentally, traini...
Learning in uncertain, noisy, or adversarial environments is a challenging task for deep neural netw...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...