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GeNAS (IJCAI 2023)

GeNAS: Neural Architecture Search with Better Generalization

Joonhyun Jeong1,2, Joonsang Yu1,3, Geondo Park2, Dongyoon Han3, YoungJoon Yoo1

1 NAVER Cloud, ImageVision
2 KAIST
3 NAVER AI Lab

Paper

Introduction

Neural Architecture Search (NAS) aims to automatically excavate the optimal network architecture with superior test performance. Recent neural architecture search (NAS) approaches rely on validation loss or accuracy to find the superior network for the target data. In this paper, we investigate a new neural architecture search measure for excavating architectures with better generalization. We demonstrate that the flatness of the loss surface can be a promising proxy for predicting the generalization capability of neural network architectures. We evaluate our proposed method on various search spaces, showing similar or even better performance compared to the state-of-the-art NAS methods. Notably, the resultant architecture found by flatness measure generalizes robustly to various shifts in data distribution (e.g. ImageNet-V2,-A,-O), as well as various tasks such as object detection and semantic segmentation.

Updates

2023-08-09 We release the official implementation of GeNAS.

Requirements

  • Pytorch 1.7.1

Please see requirements for detailed specs.

Quick Start

  1. Train SuperNet, following SPOS.
cd train_supernet
python3 train.py \
        --seed 1 \
        --data [CIFAR_DATASET_DIRECTORY] \
        --epochs 250 \
        --save [OUTPUT_DIRECTORY] \
        --random_label 0 \
        --split_data 1
  1. Evolutionary Searching

Searching with Flatness

cd evolutionary_search
python3 search.py \
        --split_data 1 \
        --seed 3 \
        --init_model_path [SUPERNET_WEIGHT@INITIAL_EPOCH] \
        --model_path [SUPERNET_WEIGHT@FINAL_EPOCH] \
        --data [CIFAR_DATASET_DIRECTORY] \
        --metric wlm \
        --stds 0.001,0.003,0.006 \
        --max_train_img_size 850 \
        --max_val_img_size 25000 \
        --wlm_weight 0 \
        --acc_weight 0

Searching with Angle + Flatness

python3 search.py \
        --split_data 1 \
        --seed 3 \
        --init_model_path [SUPERNET_WEIGHT@INITIAL_EPOCH] \
        --model_path [SUPERNET_WEIGHT@FINAL_EPOCH] \
        --data [CIFAR_DATASET_DIRECTORY] \
        --metric angle+wlm \
        --stds 0.001,0.003,0.006 \
        --max_train_img_size 850 \
        --max_val_img_size 25000 \
        --wlm_weight 16 \
        --acc_weight 0
  1. Re-training on ImageNet
  • We used V100 X 8 gpus for re-training on ImageNet.

searched on CIFAR-100 with flatness

python3 retrain.py \
        --data_root [IMAGENET_DATA_DIRECTORY] \
        --auxiliary \
        --arch=GENAS_FLATNESS_CIFAR100 \
        --init_channels 46

searched on CIFAR-100 with angle + flatness

python3 retrain.py \
        --data_root [IMAGENET_DATA_DIRECTORY] \
        --auxiliary \
        --arch=GENAS_ANGLE_FLATNESS_CIFAR100 \
        --init_channels 48

searched on CIFAR-10 with flatness

python3 retrain.py \
        --data_root [IMAGENET_DATA_DIRECTORY] \
        --auxiliary \
        --arch=GENAS_FLATNESS_CIFAR10 \
        --init_channels 52

searched on CIFAR-10 with angle + flatness

python3 retrain.py \
        --data_root [IMAGENET_DATA_DIRECTORY] \
        --auxiliary \
        --arch=GENAS_ANGLE_FLATNESS_CIFAR10 \
        --init_channels 44

Model Zoo

Search Dataset Search Metric Params (M) FLOPs (G) ImageNet Top-1 Acc (%) Weight
CIFAR-10 Angle 5.3 0.6 75.7 ckpt
CIFAR-10 Accuracy 5.4 0.6 75.3 ckpt
CIFAR-10 Flatness 5.6 0.6 76.0 ckpt
CIFAR-10 Angle + Flatness 5.3 0.6 76.1 ckpt
CIFAR-10 Accuracy + Flatness 5.6 0.6 75.7 ckpt
CIFAR-100 Angle 5.4 0.6 75.0 ckpt
CIFAR-100 Accuracy 5.4 0.6 75.4 ckpt
CIFAR-100 Flatness 5.2 0.6 76.1 ckpt
CIFAR-100 Angle + Flatness 5.4 0.6 75.7 ckpt
CIFAR-100 Accuracy + Flatness 5.4 0.6 75.9 ckpt

Architecture Visualization

angle-based searching

  • normal cell

  • reduce cell

angle+flatness based searching

  • normal cell

  • reduce cell

flatness-based searching

  • normal cell

  • reduce cell

Citation

If you find that this project helps your research, please consider citing as below:

@article{jeong2023genas,
  title={GeNAS: Neural Architecture Search with Better Generalization},
  author={Jeong, Joonhyun and Yu, Joonsang and Park, Geondo and Han, Dongyoon and Yoo, Youngjoon},
  journal={arXiv preprint arXiv:2305.08611},
  year={2023}
}

License

GeNAS
Copyright (c) 2023-present NAVER Cloud Corp.

Permission is hereby granted, free of charge, to any person obtaining a copy
of this software and associated documentation files (the "Software"), to deal
in the Software without restriction, including without limitation the rights
to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
copies of the Software, and to permit persons to whom the Software is
furnished to do so, subject to the following conditions:

The above copyright notice and this permission notice shall be included in
all copies or substantial portions of the Software.

THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT.  IN NO EVENT SHALL THE
AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN
THE SOFTWARE.

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