Learning Federated Neural Graph Databases for Answering Complex Queries from Distributed Knowledge Graphs
Qi Hu, Weifeng Jiang, Haoran Li, Zihao Wang, Jiaxin Bai, Qianren Mao, Yangqiu Song, Lixin Fan, Jianxin Li

TL;DR
This paper introduces FedNGDB, a federated neural graph database framework that enables privacy-preserving reasoning across multiple distributed knowledge graphs, enhancing data integration and reasoning capabilities for large language models.
Contribution
The paper presents a novel federated learning approach for neural graph databases, allowing multi-source, privacy-preserving reasoning over distributed knowledge graphs.
Findings
Enables reasoning across multiple distributed graphs.
Improves graph data quality through federated learning.
Supports privacy-preserving data sharing.
Abstract
The increasing demand for deep learning-based foundation models has highlighted the importance of efficient data retrieval mechanisms. Neural graph databases (NGDBs) offer a compelling solution, leveraging neural spaces to store and query graph-structured data, thereby enabling LLMs to access precise and contextually relevant information. However, current NGDBs are constrained to single-graph operation, limiting their capacity to reason across multiple, distributed graphs. Furthermore, the lack of support for multi-source graph data in existing NGDBs hinders their ability to capture the complexity and diversity of real-world data. In many applications, data is distributed across multiple sources, and the ability to reason across these sources is crucial for making informed decisions. This limitation is particularly problematic when dealing with sensitive graph data, as directly sharing…
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Taxonomy
TopicsScientific Computing and Data Management
MethodsFocus
