ResBuilder: Automated Learning of Depth with Residual Structures

In this work, we develop a neural architecture search algorithm, termed Resbuilder, that develops ResNet architectures from scratch that achieve high accuracy at moderate computational cost. It can also be used to modify existing architectures and has the capability to remove and insert ResNet block...

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Hauptverfasser: Burghoff, Julian, Rottmann, Matthias, von Conta, Jill, Schoenen, Sebastian, Witte, Andreas, Gottschalk, Hanno
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Rottmann, Matthias
von Conta, Jill
Schoenen, Sebastian
Witte, Andreas
Gottschalk, Hanno
description In this work, we develop a neural architecture search algorithm, termed Resbuilder, that develops ResNet architectures from scratch that achieve high accuracy at moderate computational cost. It can also be used to modify existing architectures and has the capability to remove and insert ResNet blocks, in this way searching for suitable architectures in the space of ResNet architectures. In our experiments on different image classification datasets, Resbuilder achieves close to state-of-the-art performance while saving computational cost compared to off-the-shelf ResNets. Noteworthy, we once tune the parameters on CIFAR10 which yields a suitable default choice for all other datasets. We demonstrate that this property generalizes even to industrial applications by applying our method with default parameters on a proprietary fraud detection dataset.
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title ResBuilder: Automated Learning of Depth with Residual Structures
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