DIsoN: Decentralized Isolation Networks for Out-of-Distribution Detection in Medical Imaging
Felix Wagner, Pramit Saha, Harry Anthony, J. Alison Noble, Konstantinos Kamnitsas

TL;DR
DIsoN introduces a decentralized framework for out-of-distribution detection in medical imaging that enables privacy-preserving comparison of test data with training data by exchanging model parameters across remote nodes.
Contribution
The paper proposes DIsoN, a novel decentralized OOD detection method that operates without sharing raw data, extending it with class-conditioning for improved accuracy.
Findings
DIsoN outperforms existing OOD detection methods on medical imaging datasets.
Decentralized approach maintains data privacy while enabling effective OOD detection.
Class-conditioned DIsoN further improves detection performance.
Abstract
Safe deployment of machine learning (ML) models in safety-critical domains such as medical imaging requires detecting inputs with characteristics not seen during training, known as out-of-distribution (OOD) detection, to prevent unreliable predictions. Effective OOD detection after deployment could benefit from access to the training data, enabling direct comparison between test samples and the training data distribution to identify differences. State-of-the-art OOD detection methods, however, either discard the training data after deployment or assume that test samples and training data are centrally stored together, an assumption that rarely holds in real-world settings. This is because shipping the training data with the deployed model is usually impossible due to the size of training databases, as well as proprietary or privacy constraints. We introduce the Isolation Network, an OOD…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Privacy-Preserving Technologies in Data · Advanced Neural Network Applications
Methodstravel james
