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Adversarial Data Programming: Using GANs to Relax the Bottleneck of Curated Labeled Data
Published in IEEE Computer Society
2018
Pages: 1556 - 1565
Abstract
Paucity of large curated hand-labeled training data forms a major bottleneck in the deployment of machine learning models in computer vision and other fields. Recent work (Data Programming) has shown how distant supervision signals in the form of labeling functions can be used to obtain labels for given data in near-constant time. In this work, we present Adversarial Data Programming (ADP), which presents an adversarial methodology to generate data as well as a curated aggregated label, given a set of weak labeling functions. We validated our method on the MNIST, Fashion MNIST, CIFAR 10 and SVHN datasets, and it outperformed many state-of-the-art models. We conducted extensive experiments to study its usefulness, as well as showed how the proposed ADP framework can be used for transfer learning as well as multi-task learning, where data from two domains are generated simultaneously using the framework along with the label information. Our future work will involve understanding the theoretical implications of this new framework from a game-theoretic perspective, as well as explore the performance of the method on more complex datasets. © 2018 IEEE.
About the journal
JournalData powered by TypesetProceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition
PublisherData powered by TypesetIEEE Computer Society
ISSN10636919