Systematic comparison of semi-supervised and self-supervised learning for medical image classification
Zhe Huang, Ruijie Jiang, Shuchin Aeron, and Michael C. Hughes

TL;DR
This paper systematically compares semi-supervised and self-supervised learning methods for medical image classification, emphasizing hyperparameter tuning and practical utility, and finds MixMatch to be the most effective method across multiple datasets.
Contribution
It provides a unified evaluation protocol for comparing these methods on medical tasks, highlighting the importance of hyperparameter tuning with realistic validation sets.
Findings
Hyperparameter tuning improves performance significantly.
MixMatch consistently outperforms other methods.
Effective semi-supervised learning is feasible with limited validation data.
Abstract
In typical medical image classification problems, labeled data is scarce while unlabeled data is more available. Semi-supervised learning and self-supervised learning are two different research directions that can improve accuracy by learning from extra unlabeled data. Recent methods from both directions have reported significant gains on traditional benchmarks. Yet past benchmarks do not focus on medical tasks and rarely compare self- and semi- methods together on an equal footing. Furthermore, past benchmarks often handle hyperparameter tuning suboptimally. First, they may not tune hyperparameters at all, leading to underfitting. Second, when tuning does occur, it often unrealistically uses a labeled validation set that is much larger than the training set. Therefore currently published rankings might not always corroborate with their practical utility This study contributes a…
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Taxonomy
TopicsBrain Tumor Detection and Classification
MethodsBitcoin Customer Service Number +1-833-534-1729 · Focus · Average Pooling · Batch Normalization · 1x1 Convolution · Max Pooling · Residual Connection · Residual Block · Global Average Pooling · Random Gaussian Blur
