Active label cleaning for improved dataset quality under resource constraints
- Melanie Bernhardt ,
- Daniel Coelho de Castro ,
- Ryutaro Tanno ,
- Anton Schwaighofer ,
- Kerem C. Tezcan ,
- Miguel Monteiro ,
- Shruthi Bannur ,
- Matthew P. Lungren ,
- Aditya Nori ,
- Ben Glocker ,
- Javier Alvarez-Valle ,
- Ozan Oktay
Nature Communications | , Vol 13(1161): pp. 1-11
Abstract: Imperfections in data annotation, known as label noise, are detrimental to the training of machine learning models and have an often-overlooked confounding effect on the assessment of model performance. Nevertheless, employing experts to remove label noise by fully re-annotating large datasets is infeasible in resource-constrained settings, such as healthcare. This work advocates for a data-driven approach to prioritising samples for re-annotation – which we term “active label cleaning”. We propose to rank instances according to estimated label correctness and labelling difficulty of each sample, and introduce a simulation framework to evaluate relabelling efficacy. Our experiments on natural images and on a new medical imaging benchmark show that cleaning noisy labels mitigates their negative impact on model training, evaluation, and selection. Crucially, the proposed active label cleaning enables correcting labels up to 4 times more effectively than typical random selection in realistic conditions, making better use of experts’ valuable time for improving dataset quality.
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InnerEye – Deep Learning
22 9 月, 2020
This is a deep learning toolbox to train models on medical images (or more generally, 3D images). It integrates seamlessly with cloud computing in Azure.