Feature-Aware Anisotropic Local Differential Privacy for Utility-Preserving Graph Representation Learning in Metal Additive Manufacturing
MD Shafikul Islam, Mahathir Mohammad Bappy, Saifur Rahman Tushar, Md Arifuzzaman

TL;DR
This paper introduces FI-LDP-HGAT, a novel framework combining hierarchical graph attention networks and feature-importance-aware anisotropic Gaussian mechanisms to enhance utility in privacy-preserving graph learning for metal additive manufacturing.
Contribution
It proposes a new anisotropic privacy mechanism that allocates noise based on feature importance, improving utility while maintaining formal differential privacy guarantees.
Findings
Achieves 81.5% utility recovery at epsilon=4.
Maintains defect recall of 0.762 under strict privacy (epsilon=2).
Outperforms classical ML, standard GNNs, and other privacy mechanisms.
Abstract
Metal additive manufacturing (AM) enables the fabrication of safety-critical components, but reliable quality assurance depends on high-fidelity sensor streams containing proprietary process information, limiting collaborative data sharing. Existing defect-detection models typically treat melt-pool observations as independent samples, ignoring layer-wise physical couplings. Moreover, conventional privacy-preserving techniques, particularly Local Differential Privacy (LDP), lead to severe utility degradation because they inject uniform noise across all feature dimensions. To address these interrelated challenges, we propose FI-LDP-HGAT. This computational framework combines two methodological components: a stratified Hierarchical Graph Attention Network (HGAT) that captures spatial and thermal dependencies across scan tracks and deposited layers, and a feature-importance-aware…
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