Privacy-Preserved Neural Graph Databases
Qi Hu, Haoran Li, Jiaxin Bai, Zihao Wang, Yangqiu Song

TL;DR
This paper introduces a privacy-preserving neural graph database framework that uses adversarial training to prevent sensitive information leakage while maintaining efficient data retrieval and analysis capabilities.
Contribution
It proposes a novel P-NGDB framework employing adversarial training to mitigate privacy risks in neural graph databases, balancing data utility and privacy protection.
Findings
Adversarial training effectively reduces privacy leakage in NGDBs.
P-NGDB maintains high retrieval accuracy while enhancing privacy.
The framework demonstrates robustness against inference attacks.
Abstract
In the era of large language models (LLMs), efficient and accurate data retrieval has become increasingly crucial for the use of domain-specific or private data in the retrieval augmented generation (RAG). Neural graph databases (NGDBs) have emerged as a powerful paradigm that combines the strengths of graph databases (GDBs) and neural networks to enable efficient storage, retrieval, and analysis of graph-structured data which can be adaptively trained with LLMs. The usage of neural embedding storage and Complex neural logical Query Answering (CQA) provides NGDBs with generalization ability. When the graph is incomplete, by extracting latent patterns and representations, neural graph databases can fill gaps in the graph structure, revealing hidden relationships and enabling accurate query answering. Nevertheless, this capability comes with inherent trade-offs, as it introduces…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Ferroelectric and Negative Capacitance Devices · Advanced Memory and Neural Computing
