Sovereign CDS Spread and Term Structure Forecasting Based on Neural Network

被引:0
作者
Abid, Amira [1 ]
Suissi, Nada [1 ]
机构
[1] Univ Sfax, Fac Business & Econ Sci, Lab Probabil & Stat, Sfax 3029, Tunisia
关键词
Credit default swaps; forecasting; generalized regression neural network; sovereign credit risk; term structure; NELSON-SIEGEL MODEL;
D O I
10.1177/09721509241276952
中图分类号
F [经济];
学科分类号
02 ;
摘要
The article aims to forecast credit risk for BRICS countries using daily credit default swaps (CDS) spreads obtained from Datastream data base from 2018 to 2023. Our approach consists, first, of forecasting the CDS spread in order to estimate the forecasted CDS term structure. The general regression neural network (GRNN) is used to predict the CDS spread. By checking the accuracy of the prediction, the results show that the GRNN model can be recommended as an effective forecasting tool for CDS spread. Second, the predicted spreads are used to estimate the forecasted CDS term structure using the Nelson-Siegel model. The results show that for Russia, overall, the CDS spreads in the long term are less than those in the short term, which implies that the future outlook is more optimistic, given the events that occurred during the study period, but it still retains the highest level of credit risk compared to other countries. Unlike Brazil, India and South Africa, the future outlook is more pessimistic. For China, the term structure is unstable; in the short term, there is a tendency to reduce the risk, but for longer horizons, the risk will increase. Thus, BRICS countries have different risk profiles depending on investment horizons. The study's findings help policymakers in developing tailored risk management strategies for BRICS countries and guide investors in making informed credit investment decisions. The use of advanced forecasting tools like GRNN and Nelson-Siegel models emphasizes the importance of sophisticated techniques in enhancing financial market resilience.
引用
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页数:20
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