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arxiv 2001.02091 v1 pith:TA6HYKGI submitted 2020-01-07 cs.CL

Knowledge-aware Attention Network for Protein-Protein Interaction Extraction

classification cs.CL
keywords extractionattentionknowledgecontextknowledge-awareprotein-proteininformationinteraction
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Protein-protein interaction (PPI) extraction from published scientific literature provides additional support for precision medicine efforts. However, many of the current PPI extraction methods need extensive feature engineering and cannot make full use of the prior knowledge in knowledge bases (KB). KBs contain huge amounts of structured information about entities and relationships, therefore plays a pivotal role in PPI extraction. This paper proposes a knowledge-aware attention network (KAN) to fuse prior knowledge about protein-protein pairs and context information for PPI extraction. The proposed model first adopts a diagonal-disabled multi-head attention mechanism to encode context sequence along with knowledge representations learned from KB. Then a novel multi-dimensional attention mechanism is used to select the features that can best describe the encoded context. Experiment results on the BioCreative VI PPI dataset show that the proposed approach could acquire knowledge-aware dependencies between different words in a sequence and lead to a new state-of-the-art performance.

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