CLMar 19, 2025

KoGNER: A Novel Framework for Knowledge Graph Distillation on Biomedical Named Entity Recognition

arXiv:2503.15737v14 citationsh-index: 8
Originality Incremental advance
AI Analysis

This addresses data sparsity and generalization issues in biomedical NER, making it an incremental improvement for domain-specific NLP applications.

The paper tackles the problem of domain-specific generalization and data sparsity in biomedical Named Entity Recognition (NER) by introducing KoGNER, a framework that integrates Knowledge Graph distillation to enhance entity recognition, achieving state-of-the-art performance on benchmark datasets.

Named Entity Recognition (NER) is a fundamental task in Natural Language Processing (NLP) that plays a crucial role in information extraction, question answering, and knowledge-based systems. Traditional deep learning-based NER models often struggle with domain-specific generalization and suffer from data sparsity issues. In this work, we introduce Knowledge Graph distilled for Named Entity Recognition (KoGNER), a novel approach that integrates Knowledge Graph (KG) distillation into NER models to enhance entity recognition performance. Our framework leverages structured knowledge representations from KGs to enrich contextual embeddings, thereby improving entity classification and reducing ambiguity in entity detection. KoGNER employs a two-step process: (1) Knowledge Distillation, where external knowledge sources are distilled into a lightweight representation for seamless integration with NER models, and (2) Entity-Aware Augmentation, which integrates contextual embeddings that have been enriched with knowledge graph information directly into GNN, thereby improving the model's ability to understand and represent entity relationships. Experimental results on benchmark datasets demonstrate that KoGNER achieves state-of-the-art performance, outperforming finetuned NER models and LLMs by a significant margin. These findings suggest that leveraging knowledge graphs as auxiliary information can significantly improve NER accuracy, making KoGNER a promising direction for future research in knowledge-aware NLP.

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