We study indiscriminate poisoning for linear learners where an adversary injects a few crafted examples into the training data with the goal of forcing the induced model to incur higher test error. Inspired by the observation that linear learners on some datasets are able to resist the best known attacks even without any defenses, we further investigate whether datasets can be inherently robust to indiscriminate poisoning attacks for linear learners. For theoretical Gaussian distributions, we rigorously characterize the behavior of an optimal poisoning attack, defined as the poisoning strategy that attains the maximum risk of the induced model at a given poisoning budget. Our results prove that linear learners can indeed be robust to indisc...
Machine Learning (ML) algorithms are vulnerable to poisoning attacks, where a fraction of the traini...
Machine learning algorithms are vulnerable to poisoning attacks, where a fraction of the training da...
The success of machine learning is fueled by the increasing availability of computing power and larg...
Indiscriminate data poisoning attacks are quite effective against supervised learning. However, not ...
As machine learning becomes widely used for automated decisions, attackers have strong incentives to...
A large body of work shows that machine learning (ML) models can leak sensitive or confidential info...
Machine learning has become an important component for many systems and applications including compu...
To study the resilience of distributed learning, the "Byzantine" literature considers a strong threa...
As in-the-wild data are increasingly involved in the training stage, machine learning applications b...
Poisoning attacks can disproportionately influence model behaviour by making small changes to the tr...
Due to its distributed nature, federated learning is vulnerable to poisoning attacks, in which malic...
Research in adversarial machine learning has shown how the performance of machine learning models ca...
We use distributionally-robust optimization for machine learning to mitigate the effect of data pois...
Machine learning systems are vulnerable to data poisoning, a coordinated attack where a fraction of ...
Comunicació presentada al ECML PKDD 2020: Machine Learning and Knowledge Discovery in Databases, cel...
Machine Learning (ML) algorithms are vulnerable to poisoning attacks, where a fraction of the traini...
Machine learning algorithms are vulnerable to poisoning attacks, where a fraction of the training da...
The success of machine learning is fueled by the increasing availability of computing power and larg...
Indiscriminate data poisoning attacks are quite effective against supervised learning. However, not ...
As machine learning becomes widely used for automated decisions, attackers have strong incentives to...
A large body of work shows that machine learning (ML) models can leak sensitive or confidential info...
Machine learning has become an important component for many systems and applications including compu...
To study the resilience of distributed learning, the "Byzantine" literature considers a strong threa...
As in-the-wild data are increasingly involved in the training stage, machine learning applications b...
Poisoning attacks can disproportionately influence model behaviour by making small changes to the tr...
Due to its distributed nature, federated learning is vulnerable to poisoning attacks, in which malic...
Research in adversarial machine learning has shown how the performance of machine learning models ca...
We use distributionally-robust optimization for machine learning to mitigate the effect of data pois...
Machine learning systems are vulnerable to data poisoning, a coordinated attack where a fraction of ...
Comunicació presentada al ECML PKDD 2020: Machine Learning and Knowledge Discovery in Databases, cel...
Machine Learning (ML) algorithms are vulnerable to poisoning attacks, where a fraction of the traini...
Machine learning algorithms are vulnerable to poisoning attacks, where a fraction of the training da...
The success of machine learning is fueled by the increasing availability of computing power and larg...