Author
Listed:
- Yajun Zhang
- Zongtian Liu
- Wen Zhou
- National Natural Science Foundation of China (NSFC)
Abstract
Event recognition is the most fundamental and critical task in event-based natural language processing systems. Existing event recognition methods based on rules and shallow neural networks have certain limitations. For example, extracting features using methods based on rules is difficult; methods based on shallow neural networks converge too quickly to a local minimum, resulting in low recognition precision. To address these problems, we propose the Chinese emergency event recognition model based on deep learning (CEERM). Firstly, we use a word segmentation system to segment sentences. According to event elements labeled in the CEC 2.0 corpus, we classify words into five categories: trigger words, participants, objects, time and location. Each word is vectorized according to the following six feature layers: part of speech, dependency grammar, length, location, distance between trigger word and core word and trigger word frequency. We obtain deep semantic features of words by training a feature vector set using a deep belief network (DBN), then analyze those features in order to identify trigger words by means of a back propagation neural network. Extensive testing shows that the CEERM achieves excellent recognition performance, with a maximum F-measure value of 85.17%. Moreover, we propose the dynamic-supervised DBN, which adds supervised fine-tuning to a restricted Boltzmann machine layer by monitoring its training performance. Test analysis reveals that the new DBN improves recognition performance and effectively controls the training time. Although the F-measure increases to 88.11%, the training time increases by only 25.35%.
Suggested Citation
Yajun Zhang & Zongtian Liu & Wen Zhou & National Natural Science Foundation of China (NSFC), 2016.
"Event Recognition Based on Deep Learning in Chinese Texts,"
PLOS ONE, Public Library of Science, vol. 11(8), pages 1-18, August.
Handle:
RePEc:plo:pone00:0160147
DOI: 10.1371/journal.pone.0160147
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