Tuesday, January 13, 2026

AgREE: Agentic Reasoning for Information Graph Completion on Rising Entities


Open-domain Information Graph Completion (KGC) faces important challenges in an ever-changing world, particularly when contemplating the continuous emergence of recent entities in every day information. Current approaches for KGC primarily depend on pretrained language fashions’ parametric data, pre-constructed queries, or single-step retrieval, sometimes requiring substantial supervision and coaching knowledge. Even so, they typically fail to seize complete and up-to-date details about unpopular and/or rising entities. To this finish, we introduce Agentic Reasoning for Rising Entities (AgREE), a novel agent-based framework that mixes iterative retrieval actions and multi-step reasoning to dynamically assemble wealthy data graph triplets. Experiments present that, regardless of requiring zero coaching efforts, AgREE considerably outperforms current strategies in developing data graph triplets, particularly for rising entities that weren’t seen throughout language fashions’ coaching processes, outperforming earlier strategies by as much as 13.7%. Furthermore, we suggest a brand new analysis methodology that addresses a elementary weak point of current setups and a brand new benchmark for KGC on rising entities. Our work demonstrates the effectiveness of mixing agent-based reasoning with strategic info retrieval for sustaining up-to-date data graphs in dynamic info environments.

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