RUVA:个性化的透明设备端图推理 / RUVA: Personalized Transparent On-Device Graph Reasoning
1️⃣ 一句话总结
这篇论文提出了一个名为RUVA的‘透明盒子’人工智能架构,它用个人知识图谱替代传统的向量数据库,让用户能够查看和精确编辑AI的记忆,从而解决现有AI系统在隐私保护和错误追溯上的‘黑箱’问题。
The Personal AI landscape is currently dominated by "Black Box" Retrieval-Augmented Generation. While standard vector databases offer statistical matching, they suffer from a fundamental lack of accountability: when an AI hallucinates or retrieves sensitive data, the user cannot inspect the cause nor correct the error. Worse, "deleting" a concept from a vector space is mathematically imprecise, leaving behind probabilistic "ghosts" that violate true privacy. We propose Ruva, the first "Glass Box" architecture designed for Human-in-the-Loop Memory Curation. Ruva grounds Personal AI in a Personal Knowledge Graph, enabling users to inspect what the AI knows and to perform precise redaction of specific facts. By shifting the paradigm from Vector Matching to Graph Reasoning, Ruva ensures the "Right to be Forgotten." Users are the editors of their own lives; Ruva hands them the pen. The project and the demo video are available at this http URL.
RUVA:个性化的透明设备端图推理 / RUVA: Personalized Transparent On-Device Graph Reasoning
这篇论文提出了一个名为RUVA的‘透明盒子’人工智能架构,它用个人知识图谱替代传统的向量数据库,让用户能够查看和精确编辑AI的记忆,从而解决现有AI系统在隐私保护和错误追溯上的‘黑箱’问题。
源自 arXiv: 2602.15553