HyDRA: A Hybrid-Driven Reasoning Architecture for Verifiable Knowledge Graphs
Adrian Kaiser, Claudiu Leoveanu-Condrei, Ryan Gold, Marius-Constantin Dinu, Markus Hofmarcher

TL;DR
HyDRA introduces a hybrid neurosymbolic architecture that automates knowledge graph construction with verifiable correctness, leveraging ontology-guided extraction, collaborative agents, and symbolic verification to enhance reliability.
Contribution
This work presents a novel hybrid-driven reasoning architecture that improves the verifiability and reliability of automated knowledge graph generation using neurosymbolic methods.
Findings
Ontology-guided triplet extraction improves KG accuracy.
Verifiable contracts enhance the correctness of generated graphs.
Extended evaluation framework assesses functional integrity of KGs.
Abstract
The synergy between symbolic knowledge, often represented by Knowledge Graphs (KGs), and the generative capabilities of neural networks is central to advancing neurosymbolic AI. A primary bottleneck in realizing this potential is the difficulty of automating KG construction, which faces challenges related to output reliability, consistency, and verifiability. These issues can manifest as structural inconsistencies within the generated graphs, such as the formation of disconnected of data or the inaccurate conflation of abstract classes with specific instances. To address these challenges, we propose HyDRA, a brid-riven easoning rchitecture designed for verifiable KG automation. Given a domain or an initial set of documents, HyDRA first constructs an ontology via a panel of collaborative neurosymbolic agents.…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Topic Modeling · Multimodal Machine Learning Applications
