Multi-instance Learning as Downstream Task of Self-Supervised Learning-based Pre-trained Model
Matsuishi, Koki, Okita, Tsuyoshi
–arXiv.org Artificial Intelligence
In deep multi-instance learning, the number of applicable instances depends on the data set. In histopathology images, deep learning multi-instance learners usually assume there are hundreds to thousands instances in a bag. However, when the number of instances in a bag increases to 256 in brain hematoma CT, learning becomes extremely difficult. In this paper, we address this drawback. To overcome this problem, we propose using a pre-trained model with self-supervised learning for the multi-instance learner as a downstream task. With this method, even when the original target task suffers from the spurious correlation problem, we show improvements of 5% to 13% in accuracy and 40% to 55% in the F1 measure for the hypodensity marker classification of brain hematoma CT.
arXiv.org Artificial Intelligence
May-29-2025
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- Research Report > New Finding (0.47)
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