An attention embedded DUAL-LSTM method for financial risk early warning of the three new board-listed companies

Author:

Cheng Xiaojing1

Affiliation:

1. School of Accounting, Wuxi Taihu University, Wuxi, China

Abstract

Computer and financial fields are both involved in the interdisciplinary topic of financial risk early warning. We suggest an attention-embedded dual Long Short Term Memory (DUAL-LSTM) for the financial risk early warning to deal with the potential and constraints of rapid economic development to improve the precision of the financial risk prediction for the listed businesses on the New Third Board. First, feature fusion attentionally quantifies data characteristics, increasing the robustness and generalizability of data features. The model’s predictive power is then increased by creating a dual LSTM model to meet the financial risk. The studies show that the attention-embedded dual LSTM model can achieve 96.9% of the F value scores and is superior to state-of-the-art model (SOTA) such as the Z-score model, Fisher discriminant method, logistic regression, and Back-Propagation network, achieves the advantage of time series in financial risk prediction. Additionally, for predicting financial risk, our algorithm performs flawlessly and effectively.

Funder

The Construction Plan of Scientific Research and Innovation Platform of Wuhan College

Research and Innovation Team of Wuhan College

Publisher

PeerJ

Subject

General Computer Science

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3. Analysis of the application of Z3 model in the early warning of corporate financial risk;REV ADHES ADHES;2023

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