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Papers/FairNAS: Rethinking Evaluation Fairness of Weight Sharing ...

FairNAS: Rethinking Evaluation Fairness of Weight Sharing Neural Architecture Search

Xiangxiang Chu, Bo Zhang, Ruijun Xu

2019-07-03ICCV 2021 10FairnessImage ClassificationNeural Architecture Search
PaperPDFCodeCode(official)

Abstract

One of the most critical problems in weight-sharing neural architecture search is the evaluation of candidate models within a predefined search space. In practice, a one-shot supernet is trained to serve as an evaluator. A faithful ranking certainly leads to more accurate searching results. However, current methods are prone to making misjudgments. In this paper, we prove that their biased evaluation is due to inherent unfairness in the supernet training. In view of this, we propose two levels of constraints: expectation fairness and strict fairness. Particularly, strict fairness ensures equal optimization opportunities for all choice blocks throughout the training, which neither overestimates nor underestimates their capacity. We demonstrate that this is crucial for improving the confidence of models' ranking. Incorporating the one-shot supernet trained under the proposed fairness constraints with a multi-objective evolutionary search algorithm, we obtain various state-of-the-art models, e.g., FairNAS-A attains 77.5% top-1 validation accuracy on ImageNet. The models and their evaluation codes are made publicly available online http://github.com/fairnas/FairNAS .

Results

TaskDatasetMetricValueModel
Neural Architecture SearchNATS-Bench Topology, CIFAR-10Test Accuracy93.23FairNAS (Chu et al., 2021)
Neural Architecture SearchNAS-Bench-201, ImageNet-16-120Accuracy (Test)42.19FairNAS
Neural Architecture SearchNAS-Bench-201, ImageNet-16-120Search time (s)9845FairNAS
Neural Architecture SearchNATS-Bench Topology, CIFAR-100Test Accuracy71FairNAS (Chu et al., 2021)
Neural Architecture SearchNAS-Bench-201, CIFAR-10Accuracy (Test)93.23FairNAS
Neural Architecture SearchNAS-Bench-201, CIFAR-10Accuracy (Val)90.07FairNAS
Neural Architecture SearchNAS-Bench-201, CIFAR-10Search time (s)9845FairNAS
Neural Architecture SearchNATS-Bench Topology, ImageNet16-120Test Accuracy42.19FairNAS (Chu et al., 2021)
Neural Architecture SearchCIFAR-10FLOPS391FairNAS-A
Neural Architecture SearchCIFAR-10Parameters3FairNAS-A
Neural Architecture SearchCIFAR-10Search Time (GPU days)8FairNAS-A
Neural Architecture SearchImageNetAccuracy75.34FairNAS-A
Neural Architecture SearchImageNetTop-1 Error Rate24.7FairNAS-A
Neural Architecture SearchImageNetAccuracy75.1FairNAS-B
Neural Architecture SearchImageNetTop-1 Error Rate24.9FairNAS-B
Neural Architecture SearchImageNetAccuracy74.69FairNAS-C
Neural Architecture SearchImageNetTop-1 Error Rate25.4FairNAS-C
Neural Architecture SearchNAS-Bench-201, CIFAR-100Accuracy (Test)71FairNAS
Neural Architecture SearchNAS-Bench-201, CIFAR-100Accuracy (Val)70.94FairNAS
Neural Architecture SearchNAS-Bench-201, CIFAR-100Search time (s)9845FairNAS
Image ClassificationImageNetGFLOPs0.776FairNAS-A
Image ClassificationImageNetGFLOPs0.69FairNAS-B
Image ClassificationImageNetGFLOPs0.642FairNAS-C
AutoMLNATS-Bench Topology, CIFAR-10Test Accuracy93.23FairNAS (Chu et al., 2021)
AutoMLNAS-Bench-201, ImageNet-16-120Accuracy (Test)42.19FairNAS
AutoMLNAS-Bench-201, ImageNet-16-120Search time (s)9845FairNAS
AutoMLNATS-Bench Topology, CIFAR-100Test Accuracy71FairNAS (Chu et al., 2021)
AutoMLNAS-Bench-201, CIFAR-10Accuracy (Test)93.23FairNAS
AutoMLNAS-Bench-201, CIFAR-10Accuracy (Val)90.07FairNAS
AutoMLNAS-Bench-201, CIFAR-10Search time (s)9845FairNAS
AutoMLNATS-Bench Topology, ImageNet16-120Test Accuracy42.19FairNAS (Chu et al., 2021)
AutoMLCIFAR-10FLOPS391FairNAS-A
AutoMLCIFAR-10Parameters3FairNAS-A
AutoMLCIFAR-10Search Time (GPU days)8FairNAS-A
AutoMLImageNetAccuracy75.34FairNAS-A
AutoMLImageNetTop-1 Error Rate24.7FairNAS-A
AutoMLImageNetAccuracy75.1FairNAS-B
AutoMLImageNetTop-1 Error Rate24.9FairNAS-B
AutoMLImageNetAccuracy74.69FairNAS-C
AutoMLImageNetTop-1 Error Rate25.4FairNAS-C
AutoMLNAS-Bench-201, CIFAR-100Accuracy (Test)71FairNAS
AutoMLNAS-Bench-201, CIFAR-100Accuracy (Val)70.94FairNAS
AutoMLNAS-Bench-201, CIFAR-100Search time (s)9845FairNAS

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