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Incorporating Domain Knowledge into Medical NLI using Knowledge Graphs (1909.00160v1)
Published 31 Aug 2019 in cs.CL, cs.AI, and cs.LG
Abstract: Recently, biomedical version of embeddings obtained from LLMs such as BioELMo have shown state-of-the-art results for the textual inference task in the medical domain. In this paper, we explore how to incorporate structured domain knowledge, available in the form of a knowledge graph (UMLS), for the Medical NLI task. Specifically, we experiment with fusing embeddings obtained from knowledge graph with the state-of-the-art approaches for NLI task (ESIM model). We also experiment with fusing the domain-specific sentiment information for the task. Experiments conducted on MedNLI dataset clearly show that this strategy improves the baseline BioELMo architecture for the Medical NLI task.
- Soumya Sharma (10 papers)
- Bishal Santra (10 papers)
- Abhik Jana (14 papers)
- Niloy Ganguly (95 papers)
- Pawan Goyal (170 papers)
- T. Y. S. S. Santosh (10 papers)