Chinese Emergency Event Recognition Using Conv-RDBiGRU Model

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Abstract

In view of the weak generalization of traditional event recognition methods, the limitation of dependence on field knowledge of expert, the longer train time of deep neural network, and the problem of gradient dispersion, the neural network joint model, Conv-RDBiGRU, integrated residual structure was proposed. Firstly, text corpus is preprocessed by word segmentation and stop words processing and uses word embedding to form the matrix of word vectors. Then, local semantic features are extracted through convolution operation, and deep context semantic features are extracted through RDBiGRU. Finally, the learned features are activated by softmax function and the recognition results are output. The novelty of work is that we integrate residual structure into recurrent neural network and combine these methods and field of application. The simulation results show that this method improves precision and recall of Chinese emergency event recognition, and the F-value is better than other methods.

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Yin, H., Cao, J., Cao, L., & Wang, G. (2020). Chinese Emergency Event Recognition Using Conv-RDBiGRU Model. Computational Intelligence and Neuroscience, 2020. https://doi.org/10.1155/2020/7090918

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