CLApr 14

Knowledge Is Not Static: Order-Aware Hypergraph RAG for Language Models

arXiv:2604.1218594.91 citationsh-index: 12
Predicted impact top 16% in CL · last 90 daysOriginality Highly original
AI Analysis

For practitioners of RAG systems, this work identifies and addresses a fundamental limitation of set-based retrieval, showing that modeling interaction order improves reasoning quality.

Existing RAG methods treat retrieved evidence as an unordered set, which fails for tasks where interaction order matters. OKH-RAG models order as a first-class property using a hypergraph with precedence structure, achieving consistent gains over permutation-invariant baselines on order-sensitive QA and explanation tasks.

Retrieval-augmented generation (RAG) enhances large language models by grounding outputs in retrieved knowledge. However, existing RAG methods including graph- and hypergraph-based approaches treat retrieved evidence as an unordered set, implicitly assuming permutation invariance. This assumption is misaligned with many real-world reasoning tasks, where outcomes depend not only on which interactions occur, but also on the order in which they unfold. We propose Order-Aware Knowledge Hypergraph RAG (OKH-RAG), which treats order as a first-class structural property. OKH-RAG represents knowledge as higher-order interactions within a hypergraph augmented with precedence structure, and reformulates retrieval as sequence inference over hyperedges. Instead of selecting independent facts, it recovers coherent interaction trajectories that reflect underlying reasoning processes. A learned transition model infers precedence directly from data without requiring explicit temporal supervision. We evaluate OKH-RAG on order-sensitive question answering and explanation tasks, including tropical cyclone and port operation scenarios. OKH-RAG consistently outperforms permutation-invariant baselines, and ablations show that these gains arise specifically from modeling interaction order. These results highlight a key limitation of set-based retrieval: effective reasoning requires not only retrieving relevant evidence, but organizing it into structured sequences.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes