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[ICML 2023] "On Strengthening and Defending Graph Reconstruction Attack with Markov Chain Approximation"

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Official code for the paper "On Strengthening and Defending Graph Reconstruction Attack with Markov Chain Approximation" (ICML 2023).

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Introduction

We perform the first comprehensive study of graph reconstruction attack that aims to reconstruct the adjacency of nodes, and show that a range of factors in GNNs can lead to the surprising leakage of private links.

Specially, by taking GNNs as a Markov chain and attacking GNNs via a flexible chain approximation, we systematically explore the underneath principles of graph reconstruction attack, and propose two information theory-guided mechanisms:

(1) MC-GRA: the chain-based attack method with adaptive designs for extracting more private information;

(2) MC-GPB: the chain-based defense method that reduces the attack fidelity with moderate accuracy loss.

Such two objectives disclose a critical belief that to recover better in attack, you must extract more multi-aspect knowledge from the trained GNN, while to learn safer for defense, you must forget more link-sensitive information in training GNNs. That is, To Recover Better, You Must Extract More; To Learn Safer, You Must Forget More.

Figure 1. Problem definition and method.

Figure 2. The workflow of MC-GRA (left) and MC-GPB (right).

Empirically, we achieve state-of-the-art results on six datasets and three common GNNs (see exemplars below).

Figure 3. Recovered adjacency on Cora. Green dots are correctly predicted edges while red dots are wrong ones.

Installation

We have tested our code on Python 3.8 with PyTorch 1.12.1, PyG 2.2.0 and CUDA 11.3. Please follow the following steps to create a virtual environment and install the required packages.

Create a virtual environment:

conda create --name mc_gra python=3.8 -y
conda activate mc_gra

Install dependencies:

pip install -r requirements.txt

Reprodution

We provide examples for MC-GRA and MC-GPB to reproduce the results as follows.

MC-GRA

Prepare data

cd MC-GRA
unzip saved_data.zip

The full command and hyperparameters for MC-GRA can be found in MC-GRA commands.

For example, to train the MC-GRA (in MC-GRA/) with given all three prior (i.e., $\mathcal{K}=[H_A, Y_A, Y]$) on Cora dataset:

python main.py --w1=0.01 --w6=10 --w7=10 --w9=10 --w10=1000 --lr=-2 --useH_A --useY_A --useY --measure=MSELoss --dataset=cora

MC-GPB

The full command and hyperparameters for MC-GPB can be found in MC-GPB commands.

For example, to train a general GNN with MC-GPB (in MC-GPB/) on Cora dataset:

python main_table.py --dataset=cora --aug_pe=0.17 --layer_MI=3.2 0.77 0.02 --layer_inter_MI=0.27 0.96 --device=cuda:0

Citation

If you find our work useful, please kindly cite our paper:

@inproceedings{zhou2023mcgra,
  title       = {On Strengthening and Defending Graph Reconstruction Attack with Markov Chain Approximation},
  author      = {Zhanke Zhou and Chenyu Zhou and Xuan Li and Jiangchao Yao and Quanming Yao and Bo Han},
  booktitle   = {International Conference on Machine Learning},
  year        = {2023}
}

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