Penalized quantile regression for ΔCoVaR
We proposed applying penalized quantile regression for computing ΔCoVaR, which is the change of value at risk (VaR) of the financial system conditional on an institution being under distress compared to median state. Three types of penalized quantile regression: LASSO, adaptive-LASSO and SCAD have...
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sg-ntu-dr.10356-790192023-02-28T23:15:26Z Penalized quantile regression for ΔCoVaR Zhu, Jianfei PUN Chi Seng School of Physical and Mathematical Sciences Science::Mathematics::Statistics We proposed applying penalized quantile regression for computing ΔCoVaR, which is the change of value at risk (VaR) of the financial system conditional on an institution being under distress compared to median state. Three types of penalized quantile regression: LASSO, adaptive-LASSO and SCAD have been considered. We compared different penalized quantile regression approaches through the a few criteria, which are Granger causality tests, Gonzalo and Granger metric, and Google trend correlation. We find the SCAD the best approach to calculate ΔCoVaR with the United States stock data. Due to the variable selection capability of SCAD algorithm, we derive that TED spread, return of S&P500 index and excess return of real estate industry are three most important variables to predict financial crisis. The advantage of SCAD is further confirmed by market data of Hong Kong and Singapore. Furthermore, to demonstrate the inter-institution correlation in 2009 financial crisis, TENET analysis was applied. Through TENET analysis, we have successfully revealed the main risk transfer from depositories to the insurers, aligning with the current understanding of risk transmission during 2009 financial crisis. Bachelor of Science in Mathematical Sciences 2019-12-02T01:45:46Z 2019-12-02T01:45:46Z 2019 Final Year Project (FYP) http://hdl.handle.net/10356/79019 en 26 p. application/pdf |
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Science::Mathematics::Statistics Zhu, Jianfei Penalized quantile regression for ΔCoVaR |
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We proposed applying penalized quantile regression for computing ΔCoVaR, which is the change of value
at risk (VaR) of the financial system conditional on an institution being under distress compared to median
state. Three types of penalized quantile regression: LASSO, adaptive-LASSO and SCAD have been
considered. We compared different penalized quantile regression approaches through the a few criteria,
which are Granger causality tests, Gonzalo and Granger metric, and Google trend correlation. We find the
SCAD the best approach to calculate ΔCoVaR with the United States stock data. Due to the variable
selection capability of SCAD algorithm, we derive that TED spread, return of S&P500 index and excess
return of real estate industry are three most important variables to predict financial crisis. The advantage of
SCAD is further confirmed by market data of Hong Kong and Singapore. Furthermore, to demonstrate the
inter-institution correlation in 2009 financial crisis, TENET analysis was applied. Through TENET analysis,
we have successfully revealed the main risk transfer from depositories to the insurers, aligning with the
current understanding of risk transmission during 2009 financial crisis. |
author2 |
PUN Chi Seng |
author_facet |
PUN Chi Seng Zhu, Jianfei |
format |
Final Year Project |
author |
Zhu, Jianfei |
author_sort |
Zhu, Jianfei |
title |
Penalized quantile regression for ΔCoVaR |
title_short |
Penalized quantile regression for ΔCoVaR |
title_full |
Penalized quantile regression for ΔCoVaR |
title_fullStr |
Penalized quantile regression for ΔCoVaR |
title_full_unstemmed |
Penalized quantile regression for ΔCoVaR |
title_sort |
penalized quantile regression for δcovar |
publishDate |
2019 |
url |
http://hdl.handle.net/10356/79019 |
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1759855884261916672 |