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Improving Deep Learning with Differential Privacy using Gradient Encoding and Denoising

This repository is the official implementation of [Improving Deep Learning with Differential Privacy using Gradient Encoding and Denoisin]

Requirements

To install requirements:

conda env create -f env.yml
cd torchsearchsorted/
pip install .

Download https://drive.google.com/file/d/1k04lW5_IGMnHxfJMd-KR7Md9KlOgKtqi/view?usp=sharing to the main directory.

Please refer to https://github.com/aliutkus/torchsearchsorted if you had problem installing torchsearchsorted.

Training

To train the model(s) in the paper, run this command:

 python MNIST.py --noisemodel studentt --noiseparams 9 0 1.0 --epochs 100 --microbatch 1 --batch 256 --ngpus 4 --nprocs 50 --clip 1.0 --seed 0  --quantization  --quantclip 1.0 --errcrt --quantmultiplier 4 --distancemultiplier 500 --distancethresh  0.700000 #MNIST
python CIFAR10.py --noisemodel studentt --noiseparams 9 0 0.9 --epochs 300 --microbatch 2 --batch 256 --ngpus 4 --nprocs 40 --clip 1.0 --seed 0  --quantization  --quantclip 1.0 --errcrt --quantmultiplier 4 --distancemultiplier 500 --distancethresh  0.700000 #CIFAR

noise model will define the probability distributions used for privatizing the gradient vector, noiseparams is the parameters for the noise model.

Results

Our model achieves the following performance on :

[CIFAR]

Model name Accuracy eps
This work 55% 3.6
DPSGD 55% 5

[MNIST]

Model name Accuracy eps
This work 96% 2.5
DPSGD 96% 5

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