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Papers/Towards Robust and Reproducible Active Learning Using Neur...

Towards Robust and Reproducible Active Learning Using Neural Networks

Prateek Munjal, Nasir Hayat, Munawar Hayat, Jamshid Sourati, Shadab Khan

2020-02-21CVPR 2022 1Image ClassificationActive LearningClassification
PaperPDFCodeCode(official)

Abstract

Active learning (AL) is a promising ML paradigm that has the potential to parse through large unlabeled data and help reduce annotation cost in domains where labeling data can be prohibitive. Recently proposed neural network based AL methods use different heuristics to accomplish this goal. In this study, we demonstrate that under identical experimental settings, different types of AL algorithms (uncertainty based, diversity based, and committee based) produce an inconsistent gain over random sampling baseline. Through a variety of experiments, controlling for sources of stochasticity, we show that variance in performance metrics achieved by AL algorithms can lead to results that are not consistent with the previously reported results. We also found that under strong regularization, AL methods show marginal or no advantage over the random sampling baseline under a variety of experimental conditions. Finally, we conclude with a set of recommendations on how to assess the results using a new AL algorithm to ensure results are reproducible and robust under changes in experimental conditions. We share our codes to facilitate AL evaluations. We believe our findings and recommendations will help advance reproducible research in AL using neural networks. We open source our code at https://github.com/PrateekMunjal/TorchAL

Results

TaskDatasetMetricValueModel
Optical Character Recognition (OCR)CIFAR10 (10,000)Accuracy88.45Random Baseline (Resnet18)
Optical Character Recognition (OCR)CIFAR10 (10,000)Accuracy85.09Random Baseline (VGG16)
Active LearningCIFAR10 (10,000)Accuracy88.45Random Baseline (Resnet18)
Active LearningCIFAR10 (10,000)Accuracy85.09Random Baseline (VGG16)

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