Application of QGA-BP Neural Network in Debt Risk Assessment of Government Platforms

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Qingping Li, Ming Liu, Yao Zhang
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引用次数: 0

Abstract

How to correctly understand the existence of local government debt, study its risk classification and impact, give full play to the “dual nature” of debt with a full-caliber indicator system, and avoid debt risks to the greatest extent. That is the research direction of this article. In order to improve the accuracy and efficiency of risk assessment and effectively reduce the debt risk of government platform companies, a risk assessment method based on optimized back-propagation (BP) neural network is proposed. First, the method uses quantum genetic algorithm (quantum genetic algorithm, QGA) to adjust and determine the initial weight and threshold of BP neural network and realize the optimization of BP neural network model parameter setting. Then, the QGA-BP debt risk assessment of government platforms is verified that it performs well in the debt risk prediction of government platform companies, and its prediction accuracy and prediction speed are improved.
QGA-BP 神经网络在政府平台债务风险评估中的应用
如何正确认识地方政府债务的存在,研究其风险分类及影响,以全口径指标体系充分发挥债务的 "二重性",最大程度规避债务风险。这也是本文的研究方向。为了提高风险评估的准确性和效率,有效降低政府平台公司的债务风险,提出了一种基于优化的反向传播(BP)神经网络的风险评估方法。首先,该方法利用量子遗传算法(quantum genetic algorithm,QGA)调整和确定BP神经网络的初始权重和阈值,实现BP神经网络模型参数设置的优化。然后,验证了 QGA-BP 政府平台债务风险评估在政府平台公司债务风险预测中表现良好,预测精度和预测速度均有所提高。
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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
24
期刊介绍: Organizations are continuously overwhelmed by a variety of new information technologies, many are Web based. These new technologies are capitalizing on the widespread use of network and communication technologies for seamless integration of various issues in information and knowledge sharing within and among organizations. This emphasis on integrated approaches is unique to this journal and dictates cross platform and multidisciplinary strategy to research and practice.
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