LinGCN: Structural Linearized Graph Convolutional Network for Homomorphically Encrypted Inference
–Neural Information Processing Systems
The growth of Graph Convolution Network (GCN) model sizes has revolutionized numerous applications, surpassing human performance in areas such as personal healthcare and financial systems. The deployment of GCNs in the cloud raises privacy concerns due to potential adversarial attacks on client data. To address security concerns, Privacy-Preserving Machine Learning (PPML) using Homomorphic Encryption (HE) secures sensitive client data. However, it introduces substantial computational overhead in practical applications. To tackle those challenges, we present LinGCN, a framework designed to reduce multiplication depth and optimize the performance of HE based GCN inference. LinGCN is structured around three key elements: (1) A differentiable structural linearization algorithm, complemented by a parameterized discrete indicator function, co-trained with model weights to meet the optimization goal. This strategy promotes fine-grained node-level non-linear location selection, resulting in a model with minimized multiplication depth.
Neural Information Processing Systems
Dec-24-2025, 21:14:25 GMT
- Industry:
- Information Technology > Security & Privacy (0.58)
- Technology:
- Information Technology
- Artificial Intelligence > Machine Learning (0.57)
- Data Science > Data Mining (0.58)
- Security & Privacy (0.58)
- Information Technology