Deep multi-metric training: the need of multi-metric curve evaluation to avoid weak learning

被引:0
作者
Mamalakis, Michail [1 ,2 ,3 ]
Banerjee, Abhirup [8 ,9 ]
Ray, Surajit [4 ]
Wilkie, Craig [4 ]
Clayton, Richard H. [2 ,3 ]
Swift, Andrew J. [3 ,5 ]
Panoutsos, George [6 ]
Vorselaars, Bart [7 ]
机构
[1] Department of Psychiatry, University of Cambridge, Herchel Smith Building, Robinson Way, Cambridge
[2] Department of Computer Science, University of Sheffield, 211 Portobello, Sheffield
[3] Insigneo Institute for in silico Medicine, University of Sheffield, The Pam Liversidge Building, Sheffield
[4] School of Mathematics and Statistics, University of Glasgow, Glasgow
[5] Department of Infection, Immunity and Cardiovascular Disease, University of Sheffield, Sheffield
[6] Department of Automatic Control and Systems Engineering, University of Sheffield, Sheffield
[7] School of Mathematics and Physics, University of Lincoln, Brayford Pool, Lincoln
[8] Department of Engineering Science, Institute of Biomedical Engineering, University of Oxford, Oxford
[9] Division of Cardiovascular Medicine, Radcliffe Department of Medicine, University of Oxford, Oxford
基金
英国惠康基金; 英国工程与自然科学研究理事会;
关键词
Chest X-rays; Classification; COVID-19; DenRes-131; Robust learning; Weak learning;
D O I
10.1007/s00521-024-10182-6
中图分类号
学科分类号
摘要
The development and application of artificial intelligence-based computer vision systems in medicine, environment, and industry are playing an increasingly prominent role. Hence, the need for optimal and efficient hyperparameter tuning strategies is more than crucial to deliver the highest performance of the deep learning networks in large and demanding datasets. In our study, we have developed and evaluated a new training methodology named deep multi-metric training (DMMT) for enhanced training performance. The DMMT delivers a state of robust learning for deep networks using a new important criterion of multi-metric performance evaluation. We have tested the DMMT methodology in multi-class (three, four, and ten), multi-vendors (different X-ray imaging devices), and multi-size (large, medium, and small) datasets. The validity of the DMMT methodology has been tested in three different classification problems: (i) medical disease classification, (ii) environmental classification, and (iii) ecological classification. For disease classification, we have used two large COVID-19 chest X-rays datasets, namely the BIMCV COVID-19+ and Sheffield hospital datasets. The environmental application is related to the classification of weather images in cloudy, rainy, shine or sunrise conditions. The ecological classification task involves a classification of three animal species (cat, dog, wild) and a classification of ten animals and transportation vehicles categories (CIFAR-10). We have used state-of-the-art networks of DenseNet-121, ResNet-50, VGG-16, VGG-19, and DenResCov-19 (DenRes-131) to verify that our novel methodology is applicable in a variety of different deep learning networks. To the best of our knowledge, this is the first work that proposes a training methodology to deliver robust learning, over a variety of deep learning networks and multi-field classification problems. © Crown 2024.
引用
收藏
页码:18841 / 18862
页数:21
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