This entry accommodates the main paper "Local Competition and Stochasticity for Adversarial Robustness in Deep Learning", AISTATS 2021, its supplemental material, as well as the Tensorflow-based code implementation. Further requirements and instructions are provided in the respective README.md file. Abstract: This work addresses adversarial robustness in deep learning by considering deep networks with stochastic local winner-takes-all (LWTA) activations. This type of network units result in sparse representations from each model layer, as the units are organized in blocks where only one unit generates a non-zero output. The main operating principle of the introduced units lies on stochastic arguments, as the network performs posterior samp...
International audienceThis paper introduces stochastic sparse adversarial attacks (SSAA), standing a...
Despite significant advances, deep networks remain highly susceptible to adversarial attack. One fun...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
This work addresses adversarial robustness in deep learning by considering deep networks with stoch...
This entry accommodates the main paper "Stochastic Local Winner-Takes-All Networks Enable Profound A...
This post entails the code and few-shot benchmarks Omniglot and Mini-Imagenet, addressed for our sub...
This work addresses meta-learning (ML) by considering deep networks with stochastic local winner-tak...
This work aims to address the long-established problem of learning diversified representations. To t...
This work addresses meta-learning (ML) by considering deep networks with stochastic local winner-tak...
© 2017 IEEE. Deep learning has been found to be vulnerable to changes in the data distribution. This...
The reliability of deep learning algorithms is fundamentally challenged by the existence of adversar...
International audienceThis paper investigates the theory of robustness against adversarial attacks. ...
Deep learning plays an important role in various disciplines, such as auto-driving, information tech...
In this thesis, we study the robustness and generalization properties of Deep Neural Networks (DNNs)...
Neural networks are known to be vulnerable to adversarial examples. Carefully chosen perturbations t...
International audienceThis paper introduces stochastic sparse adversarial attacks (SSAA), standing a...
Despite significant advances, deep networks remain highly susceptible to adversarial attack. One fun...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
This work addresses adversarial robustness in deep learning by considering deep networks with stoch...
This entry accommodates the main paper "Stochastic Local Winner-Takes-All Networks Enable Profound A...
This post entails the code and few-shot benchmarks Omniglot and Mini-Imagenet, addressed for our sub...
This work addresses meta-learning (ML) by considering deep networks with stochastic local winner-tak...
This work aims to address the long-established problem of learning diversified representations. To t...
This work addresses meta-learning (ML) by considering deep networks with stochastic local winner-tak...
© 2017 IEEE. Deep learning has been found to be vulnerable to changes in the data distribution. This...
The reliability of deep learning algorithms is fundamentally challenged by the existence of adversar...
International audienceThis paper investigates the theory of robustness against adversarial attacks. ...
Deep learning plays an important role in various disciplines, such as auto-driving, information tech...
In this thesis, we study the robustness and generalization properties of Deep Neural Networks (DNNs)...
Neural networks are known to be vulnerable to adversarial examples. Carefully chosen perturbations t...
International audienceThis paper introduces stochastic sparse adversarial attacks (SSAA), standing a...
Despite significant advances, deep networks remain highly susceptible to adversarial attack. One fun...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...