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Main Author: Godavarti, Mahesh
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.03304
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author Godavarti, Mahesh
author_facet Godavarti, Mahesh
contents We present a concise architecture for joint training on sentences and structured data while keeping knowledge and language representations separable. The model treats knowledge graphs and hypergraphs as structured instances with role slots and encodes them into a key-value repository that a language transformer can attend over. Attention is conditioned by journey-based role transport, which unifies edge-labeled KG traversal, hyperedge traversal, and sentence structure. We outline a dual-stream architecture, hierarchical layer groups with instance-local, neighborhood, and global mixing attention, retrieval over a separate repository, and multi-task objectives spanning masked language modeling, link prediction, and role-consistency denoising. The result is an explicit, inspectable separation between linguistic context and structured knowledge, while still enabling tight alignment through cross-attention.
format Preprint
id arxiv_https___arxiv_org_abs_2603_03304
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Knowledge Graph and Hypergraph Transformers with Repository-Attention and Journey-Based Role Transport
Godavarti, Mahesh
Machine Learning
Artificial Intelligence
20-XX, 08A02
F.4.1; I.2
We present a concise architecture for joint training on sentences and structured data while keeping knowledge and language representations separable. The model treats knowledge graphs and hypergraphs as structured instances with role slots and encodes them into a key-value repository that a language transformer can attend over. Attention is conditioned by journey-based role transport, which unifies edge-labeled KG traversal, hyperedge traversal, and sentence structure. We outline a dual-stream architecture, hierarchical layer groups with instance-local, neighborhood, and global mixing attention, retrieval over a separate repository, and multi-task objectives spanning masked language modeling, link prediction, and role-consistency denoising. The result is an explicit, inspectable separation between linguistic context and structured knowledge, while still enabling tight alignment through cross-attention.
title Knowledge Graph and Hypergraph Transformers with Repository-Attention and Journey-Based Role Transport
topic Machine Learning
Artificial Intelligence
20-XX, 08A02
F.4.1; I.2
url https://arxiv.org/abs/2603.03304