PrivGemo: Privacy-Preserving Dual-Tower Graph Retrieval for Empowering LLM Reasoning with Memory Augmentation

arXiv — cs.CLWednesday, January 14, 2026 at 5:00:00 AM
  • PrivGemo has been introduced as a privacy-preserving framework designed for knowledge graph (KG)-grounded reasoning, addressing the risks associated with using private KGs in large language models (LLMs). This dual-tower architecture maintains local knowledge while allowing remote reasoning through an anonymized interface, effectively mitigating semantic and structural exposure.
  • The development of PrivGemo is significant as it enhances the security of LLM interactions with private data, ensuring that sensitive information remains protected while still enabling advanced reasoning capabilities. This framework is particularly relevant in the context of increasing concerns over data privacy and the potential risks associated with using closed-source LLM APIs.
  • The introduction of PrivGemo aligns with ongoing discussions in the AI community regarding the balance between leveraging powerful LLMs and safeguarding user privacy. As various frameworks emerge to address privacy concerns, such as Rational Localized Adversarial Anonymization and confidential prompting, the need for robust solutions that prevent data leakage while maintaining functionality is becoming increasingly critical.
— via World Pulse Now AI Editorial System

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