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Effective Model Sparsification by Scheduled Grow-and-Prune Methods

ICLR 2022 paper "Effective Model Sparsification by Scheduled Grow-and-Prune Methods". Model and test code are available for downloading.

Please see an example of GaP with Transformer.

Computer Vision

Model Download

ModelsMethodPartitionSparsity RatioSparsity DistributionTop-1 Accuracy
ResNet-50S-GaP40.8Uniform77.856%
ResNet-50S-GaP40.8Non-uniform78.132%
ResNet-50P-GaP40.8Uniform77.492%
ResNet-50S-GaP40.9Uniform76.348%
ResNet-50S-GaP40.9Non-uniform77.896%
ResNet-50P-GaP40.9Uniform76.128%

Machine Translation (WMT-14 EN-DE)

Model Download

ModelsMethodPartitionSparsity RatioSparsity DistributionBLEU Score
TransformerS-GaP30.8Uniform27.59
TransformerS-GaP60.8Uniform27.65
TransformerP-GaP30.8Uniform27.93
TransformerP-GaP60.8Uniform27.67
TransformerS-GaP30.9Uniform27.72
TransformerS-GaP60.9Uniform27.06
TransformerP-GaP30.9Uniform27.31
TransformerP-GaP60.9Uniform26.88

3D Object Part Segmentation with PointNet++ on ShapeNet

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Object Detection (SSD on COCO-2017)

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Citation

if you find this repo is helpful, please cite

@inproceedings{ma2022effective,
    title={Effective Model Sparsification by Scheduled Grow-and-Prune Methods},
    author={Xiaolong Ma and Minghai Qin and Fei Sun and Zejiang Hou and Kun Yuan and Yi Xu and Yanzhi Wang and Yen-Kuang Chen and Rong Jin and Yuan Xie},
    booktitle={International Conference on Learning Representations},
    year={2022},
    url={https://openreview.net/forum?id=xa6otUDdP2W}
}