In this paper, we propose a class of robust stochastic subgradient methods for distributed learning from heterogeneous datasets at presence of an unknown number of Byzantine workers. The Byzantine workers, during the learning process, may send arbitrary incorrect messages to the master due to data corruptions, communication failures or malicious attacks, and consequently bias the learned model. The key to the proposed methods is a regularization term incorporated with the objective function so as to robustify the learning task and mitigate the negative effects of Byzantine attacks. The resultant subgradient-based algorithms are termed Byzantine-Robust Stochastic Aggregation methods, justifying our acronym RSA used henceforth. In contrast to...
Byzantine resilience emerged as a prominent topic within the distributed machine learning community....
This paper considers the Byzantine fault-tolerance problem in distributed stochastic gradient descen...
A distributed system consists of networked components that interact with each other in order to achi...
For many data-intensive real-world applications, such as recognizing objects from images, detecting ...
We present AGGREGATHOR, a framework that implements state-of-the-art robust (Byzantine-resilient) di...
Asynchronous distributed machine learning solutions have proven very effective so far, but always as...
A very common optimization technique in Machine Learning is Stochastic Gradient Descent (SGD). SGD c...
This work focuses on decentralized stochastic optimization in the presence of Byzantine attacks. Dur...
Byzantine-resilient Stochastic Gradient Descent (SGD) aims at shielding model training from Byzantin...
This paper investigates the robustness of over-the-air federated learning to Byzantine attacks. The ...
We report on \emph{Krum}, the first \emph{provably} Byzantine-tolerant aggregation rule for distribu...
Whether it occurs in artificial or biological substrates, {\it learning} is a {distributed} phenomen...
Distributed learning paradigms, such as federated and decentralized learning, allow for the coordina...
The distributed nature of Federated Learning (FL) creates security-related vulnerabilities including...
We propose a generic distributed learning framework for robust statistical learn-ing on big contamin...
Byzantine resilience emerged as a prominent topic within the distributed machine learning community....
This paper considers the Byzantine fault-tolerance problem in distributed stochastic gradient descen...
A distributed system consists of networked components that interact with each other in order to achi...
For many data-intensive real-world applications, such as recognizing objects from images, detecting ...
We present AGGREGATHOR, a framework that implements state-of-the-art robust (Byzantine-resilient) di...
Asynchronous distributed machine learning solutions have proven very effective so far, but always as...
A very common optimization technique in Machine Learning is Stochastic Gradient Descent (SGD). SGD c...
This work focuses on decentralized stochastic optimization in the presence of Byzantine attacks. Dur...
Byzantine-resilient Stochastic Gradient Descent (SGD) aims at shielding model training from Byzantin...
This paper investigates the robustness of over-the-air federated learning to Byzantine attacks. The ...
We report on \emph{Krum}, the first \emph{provably} Byzantine-tolerant aggregation rule for distribu...
Whether it occurs in artificial or biological substrates, {\it learning} is a {distributed} phenomen...
Distributed learning paradigms, such as federated and decentralized learning, allow for the coordina...
The distributed nature of Federated Learning (FL) creates security-related vulnerabilities including...
We propose a generic distributed learning framework for robust statistical learn-ing on big contamin...
Byzantine resilience emerged as a prominent topic within the distributed machine learning community....
This paper considers the Byzantine fault-tolerance problem in distributed stochastic gradient descen...
A distributed system consists of networked components that interact with each other in order to achi...