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Papers/Effective Version Space Reduction for Convolutional Neural...

Effective Version Space Reduction for Convolutional Neural Networks

Jiayu Liu, Ioannis Chiotellis, Rudolph Triebel, Daniel Cremers

2020-06-22Image ClassificationActive Learning
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Abstract

In active learning, sampling bias could pose a serious inconsistency problem and hinder the algorithm from finding the optimal hypothesis. However, many methods for neural networks are hypothesis space agnostic and do not address this problem. We examine active learning with convolutional neural networks through the principled lens of version space reduction. We identify the connection between two approaches---prior mass reduction and diameter reduction---and propose a new diameter-based querying method---the minimum Gibbs-vote disagreement. By estimating version space diameter and bias, we illustrate how version space of neural networks evolves and examine the realizability assumption. With experiments on MNIST, Fashion-MNIST, SVHN and STL-10 datasets, we demonstrate that diameter reduction methods reduce the version space more effectively and perform better than prior mass reduction and other baselines, and that the Gibbs vote disagreement is on par with the best query method.

Results

TaskDatasetMetricValueModel
Image ClassificationSTL-10Percentage correct59.45PWD
Image ClassificationSTL-10Percentage correct59.33GVD
Image ClassificationSTL-10Percentage correct59.13VR
Image ClassificationSTL-10Percentage correct58.93Core SET
Image ClassificationSTL-10Percentage correct58.84GE
Image ClassificationSTL-10Percentage correct58.81DFAL
Image ClassificationSTL-10Percentage correct58.15Random
Image ClassificationSTL-10Percentage correct57.35BALD-MCD
Image ClassificationSTL-10Percentage correct57.31M2-PWD

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