The framework of the two-stage biomedical event trigger detection method based on hybrid neural network and sentence embeddings.
Abstract:
Biomedical event extraction is a challenging task in biomedical text mining, which plays an important role in improving biomedical research and disease prevention. As the...Show MoreMetadata
Abstract:
Biomedical event extraction is a challenging task in biomedical text mining, which plays an important role in improving biomedical research and disease prevention. As the crucial and prerequisite step in event extraction, biomedical trigger detection has attracted much attention. Previous approaches usually depended on feature engineering with unbalanced data. In this paper, we propose a two-stage method based on hybrid neural network for trigger detection, which divides trigger detection into recognition stage and classification stage. In the first stage, we build a BiLSTM based recognition model integrating attention mechanism (Att-BiLSTM). In the second stage, the classification model based on Passive-Aggressive online algorithm is constructed. Furthermore, to enrich sentence-level features, we establish sentence embeddings and add reading gate. On the multi-level event extraction (MLEE) corpus test dataset, our method achieves an F-score of 80.26%, which achieves the state-of-the-art systems.
The framework of the two-stage biomedical event trigger detection method based on hybrid neural network and sentence embeddings.
Published in: IEEE Access ( Volume: 9)
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Triggering Event ,
- Network Embedding ,
- Sentence Embedding ,
- Hybrid Neural Network ,
- Neural Embedding ,
- Neural Network Embedding ,
- Biomedical Event ,
- Attention Mechanism ,
- Two-stage Method ,
- Unbalanced Data ,
- Online Algorithm ,
- Recognition Stage ,
- Biomedical Text ,
- Event Extraction ,
- Training Dataset ,
- Contextual Information ,
- Small Datasets ,
- Medical Literature ,
- Semantic Information ,
- Pre-trained Word Embeddings ,
- Word Embedding ,
- Pre-trained Embeddings ,
- Negative Instances ,
- Trigger Type ,
- Global Information ,
- Stress Triggers ,
- Complex Events ,
- Positive Instances ,
- Hidden Vector
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Triggering Event ,
- Network Embedding ,
- Sentence Embedding ,
- Hybrid Neural Network ,
- Neural Embedding ,
- Neural Network Embedding ,
- Biomedical Event ,
- Attention Mechanism ,
- Two-stage Method ,
- Unbalanced Data ,
- Online Algorithm ,
- Recognition Stage ,
- Biomedical Text ,
- Event Extraction ,
- Training Dataset ,
- Contextual Information ,
- Small Datasets ,
- Medical Literature ,
- Semantic Information ,
- Pre-trained Word Embeddings ,
- Word Embedding ,
- Pre-trained Embeddings ,
- Negative Instances ,
- Trigger Type ,
- Global Information ,
- Stress Triggers ,
- Complex Events ,
- Positive Instances ,
- Hidden Vector
- Author Keywords