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Integrating Logical Rules Into Neural Multi-Hop Reasoning for Drug Repurposing (2007.05292v1)
Published 10 Jul 2020 in cs.LG, cs.AI, and stat.ML
Abstract: The graph structure of biomedical data differs from those in typical knowledge graph benchmark tasks. A particular property of biomedical data is the presence of long-range dependencies, which can be captured by patterns described as logical rules. We propose a novel method that combines these rules with a neural multi-hop reasoning approach that uses reinforcement learning. We conduct an empirical study based on the real-world task of drug repurposing by formulating this task as a link prediction problem. We apply our method to the biomedical knowledge graph Hetionet and show that our approach outperforms several baseline methods.
- Yushan Liu (14 papers)
- Marcel Hildebrandt (12 papers)
- Mitchell Joblin (14 papers)
- Martin Ringsquandl (14 papers)
- Volker Tresp (158 papers)