Systemic financial risk early warning of financial market in China using Attention-LSTM model

We propose an Attention-LSTM neural network model to study the systemic risk early warning of China. Based on text mining, the network public opinion index is constructed and used as a training set to be incorporated into the early warning model to test the early warning effect. The results show tha...

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Veröffentlicht in:The North American journal of economics and finance 2021-04, Vol.56, p.101383, Article 101383
Hauptverfasser: Ouyang, Zi-sheng, Yang, Xi-te, Lai, Yongzeng
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Sprache:eng
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Zusammenfassung:We propose an Attention-LSTM neural network model to study the systemic risk early warning of China. Based on text mining, the network public opinion index is constructed and used as a training set to be incorporated into the early warning model to test the early warning effect. The results show that: (i) the network public opinion is the non-linear Granger causality of systemic risk. (ii) The Attention-LSTM neural network has strong generalization ability. Early warning effects have been significantly improved. (iii) Compared with the BP neural network model, the SVR model and the ARIMA model, the LSTM neural network early warning model has a higher accuracy rate, and its average prediction accuracy for systemic risk indicators has been improved over short, medium and long terms. When the attention mechanism is included in the LSTM, the Attention-LSTM neural network model is even more accurate in all the cases. •Systemic financial risk early warning using deep learning techniques is considered.•Online public opinion network index of Chinese financial market is constructed.•TInfluence of network public opinion on systemic financial risk is studied.•Attention-LSTM NN, nonlinear granger causality test, text analysis, etc., are used.•LSMT type NN models achieve higher accuracy than other methods considered.
ISSN:1062-9408
1879-0860
DOI:10.1016/j.najef.2021.101383