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http://hdl.handle.net/1942/48260| Title: | DFQF: Data Free Quantization-aware Fine-tuning | Authors: | LI, Bowen Huang, Kai CHEN, Siang Xiong, Dongliang Jiang, Haitian CLAESEN, Luc |
Issue Date: | 2020 | Source: | Jialin Pan, Sinno; Sugiyama, Masashi (Ed.). Proceedings of Machine Learning Research, p. 289 -304 | Series/Report: | Proceedings of Machine Learning Research | Series/Report no.: | 129 | Abstract: | Data free deep neural network quantization is a practical challenge, since the original training data is often unavailable due to some privacy, proprietary or transmission issues. The existing methods implicitly equate data-free with training-free and quantize model manually through analyzing the weights’ distribution. It leads to a significant accuracy drop in lower than 6-bit quantization. In this work, we propose the data free quantization-aware fine-tuning (DFQF), wherein no real training data is required, and the quantized network is fine-tuned with generated images. Specifically, we start with training a generator from the pre-trained full-precision network with inception score loss, batch-normalization statistics loss and adversarial loss to synthesize a fake image set. Then we fine-tune the quantized student network with the full-precision teacher network and the generated images by utilizing knowledge distillation (KD). The proposed DFQF outperforms state-of-the-art post-train quantization methods, and achieve W4A4 quantization of ResNet20 on the CIFAR10 dataset within 1% accuracy drop. | Keywords: | Data-free;Quantization;Adversarial | Document URI: | http://hdl.handle.net/1942/48260 | Link to publication/dataset: | https://proceedings.mlr.press/v129/li20a/li20a.pdf | Rights: | authors | Category: | C1 | Type: | Proceedings Paper |
| Appears in Collections: | Research publications |
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| File | Description | Size | Format | |
|---|---|---|---|---|
| DFQF - Data Free Quantization-aware Fine-tuning.pdf | Published version | 557.32 kB | Adobe PDF | View/Open |
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