International audienceThis paper presents a quantitative approach to demonstrate the robustness of neural networks for tabular data. These data form the backbone of the data structures found in most industrial applications. We analyse the effect of various widely used techniques we encounter in neural network practice, such as regularization of weights, addition of noise to the data, and positivity constraints. This analysis is performed by using three state-of-the-art techniques, which provide mathematical proofs of robustness in terms of Lipschitz constant for feed-forward networks. The experiments are carried out on two prediction tasks and one classification task. Our work brings insights into building robust neural network architecture...
Neural networks(NNs) have been widely used over the past decade at the core of intelligentsystems fr...
Many artificial intelligence (AI) techniques are inspired by problem-solving strategies found in nat...
The paper addresses the analysis of robustness over training time issue. Robustness is evaluated in ...
International audienceThis paper presents a quantitative approach to demonstrate the robustness of n...
International audienceThe stability of neural networks with respect to adversarial perturbations has...
With their supreme performance in dealing with a large amount of data, neural networks have signific...
Bayesian neural networks (BNNs), a family of neural networks with a probability distribution placed ...
We present a new approach to assessing the robustness of neural networks based on estimating the pro...
Neural networks are currently used in a large number of applications, that is why the following ques...
IEEE Neural networks (NNs) are now routinely implemented on systems that must operate in uncertain e...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...
International audienceWe investigate the robustness of feed-forward neural networks when input data ...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
A domain-theoretic framework is presented for validated robustness analysis of neural networks. Firs...
Neural networks(NNs) have been widely used over the past decade at the core of intelligentsystems fr...
Many artificial intelligence (AI) techniques are inspired by problem-solving strategies found in nat...
The paper addresses the analysis of robustness over training time issue. Robustness is evaluated in ...
International audienceThis paper presents a quantitative approach to demonstrate the robustness of n...
International audienceThe stability of neural networks with respect to adversarial perturbations has...
With their supreme performance in dealing with a large amount of data, neural networks have signific...
Bayesian neural networks (BNNs), a family of neural networks with a probability distribution placed ...
We present a new approach to assessing the robustness of neural networks based on estimating the pro...
Neural networks are currently used in a large number of applications, that is why the following ques...
IEEE Neural networks (NNs) are now routinely implemented on systems that must operate in uncertain e...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...
International audienceWe investigate the robustness of feed-forward neural networks when input data ...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
A domain-theoretic framework is presented for validated robustness analysis of neural networks. Firs...
Neural networks(NNs) have been widely used over the past decade at the core of intelligentsystems fr...
Many artificial intelligence (AI) techniques are inspired by problem-solving strategies found in nat...
The paper addresses the analysis of robustness over training time issue. Robustness is evaluated in ...