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Deep Bayesian Active Learning with Image Data

About

Even though active learning forms an important pillar of machine learning, deep learning tools are not prevalent within it. Deep learning poses several difficulties when used in an active learning setting. First, active learning (AL) methods generally rely on being able to learn and update models from small amounts of data. Recent advances in deep learning, on the other hand, are notorious for their dependence on large amounts of data. Second, many AL acquisition functions rely on model uncertainty, yet deep learning methods rarely represent such model uncertainty. In this paper we combine recent advances in Bayesian deep learning into the active learning framework in a practical way. We develop an active learning framework for high dimensional data, a task which has been extremely challenging so far, with very sparse existing literature. Taking advantage of specialised models such as Bayesian convolutional neural networks, we demonstrate our active learning techniques with image data, obtaining a significant improvement on existing active learning approaches. We demonstrate this on both the MNIST dataset, as well as for skin cancer diagnosis from lesion images (ISIC2016 task).

Yarin Gal, Riashat Islam, Zoubin Ghahramani• 2017

Related benchmarks

TaskDatasetResultRank
Image ClassificationMNIST (test)
Accuracy96.51
894
Image ClassificationFashion MNIST (test)
Accuracy84.67
592
Image ClassificationFood101
Accuracy84.3
457
Image ClassificationCIFAR-100
Accuracy61.5
435
Image ClassificationSVHN (test)
Accuracy85.26
401
3D Object DetectionScanNet V2 (val)
mAP@0.2545.71
361
Image ClassificationSTL-10 (test)
Accuracy57.35
357
3D Object DetectionSUN RGB-D (val)
mAP@0.2547.48
163
Image ClassificationCIFAR100
Mean Accuracy89.6
55
Image ClassificationDomainNet Real
Mean Accuracy82.1
55
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