International audiencePrevious security research efforts orbiting around graphs have been exclusively focusing on either (de-)anonymizing the graphs or understanding the security and privacy issues of graph neural networks. Little attention has been paid to understand the privacy risks of integrating the output from graph embedding models (e.g., node embeddings) with complex downstream machine learning pipelines. In this paper, we fill this gap and propose a novel model-agnostic graph recovery attack that exploits the implicit graph structural information preserved in the embeddings of graph nodes. We show that an adversary can recover edges with decent accuracy by only gaining access to the node embedding matrix of the original graph witho...
While graph neural networks (GNNs) dominate the state-of-the-art for exploring graphs in real-world ...
Node embedding methods map network nodes to low dimensional vectors that can be subsequently used in...
The performance of graph representation learning is affected by the quality of graph input. While ex...
International audiencePrevious security research efforts orbiting around graphs have been exclusivel...
Graph is an important data representation ubiquitously existing in the real world. However, analyzin...
This paper studies to what extent an adversary (without the original graph data) can recover the ori...
Privacy and interpretability are two important ingredients for achieving trustworthy machine learnin...
Graph data, such as chemical networks and social networks, may be deemed confidential/private becaus...
Graph embeddings have been proposed to map graph data to low dimensional space for downstream proces...
International audienceMany real-world data come in the form of graphs. Graph neural networks (GNNs),...
Many data mining tasks rely on graphs to model relational structures among individuals (nodes). Sinc...
Graph data has been widely used to represent data from various domain, e.g., social networks, recomm...
Graph Neural Networks (GNNs) have achieved tremendous success in many graph mining tasks benefitting...
With the rapid development of neural network technologies in machine learning, neural networks are w...
With the great success of graph embedding model on both academic and industry area, the robustness o...
While graph neural networks (GNNs) dominate the state-of-the-art for exploring graphs in real-world ...
Node embedding methods map network nodes to low dimensional vectors that can be subsequently used in...
The performance of graph representation learning is affected by the quality of graph input. While ex...
International audiencePrevious security research efforts orbiting around graphs have been exclusivel...
Graph is an important data representation ubiquitously existing in the real world. However, analyzin...
This paper studies to what extent an adversary (without the original graph data) can recover the ori...
Privacy and interpretability are two important ingredients for achieving trustworthy machine learnin...
Graph data, such as chemical networks and social networks, may be deemed confidential/private becaus...
Graph embeddings have been proposed to map graph data to low dimensional space for downstream proces...
International audienceMany real-world data come in the form of graphs. Graph neural networks (GNNs),...
Many data mining tasks rely on graphs to model relational structures among individuals (nodes). Sinc...
Graph data has been widely used to represent data from various domain, e.g., social networks, recomm...
Graph Neural Networks (GNNs) have achieved tremendous success in many graph mining tasks benefitting...
With the rapid development of neural network technologies in machine learning, neural networks are w...
With the great success of graph embedding model on both academic and industry area, the robustness o...
While graph neural networks (GNNs) dominate the state-of-the-art for exploring graphs in real-world ...
Node embedding methods map network nodes to low dimensional vectors that can be subsequently used in...
The performance of graph representation learning is affected by the quality of graph input. While ex...