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Chao Wang
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Cited by
Year
Forecasting risk via realized GARCH, incorporating the realized range
R Gerlach, C Wang
Quantitative Finance 16 (4), 501-511, 2016
622016
Semi-parametric dynamic asymmetric Laplace models for tail risk forecasting, incorporating realized measures
R Gerlach, C Wang
International Journal of Forecasting 36 (2), 489-506, 2020
522020
Bayesian realized-GARCH models for financial tail risk forecasting incorporating the two-sided Weibull distribution
C Wang, Q Chen, R Gerlach
Quantitative Finance 19 (6), 1017-1042, 2019
262019
Semi-parametric Bayesian tail risk forecasting incorporating realized measures of volatility
R Gerlach, D Walpole, C Wang
Quantitative Finance 17 (2), 199-215, 2017
242017
Nonparametric Expected Shortfall Forecasting Incorporating Weighted Quantiles
G Storti, C Wang
International Journal of Forecasting. In press., 2021
202021
Bayesian semi-parametric realized conditional autoregressive expectile models for tail risk forecasting
R Gerlach, C Wang
Journal of Financial Econometrics 20 (1), 105-138, 2022
192022
Seasonality in deep learning forecasts of electricity imbalance prices
S Deng, J Inekwe, V Smirnov, A Wait, C Wang
Energy Economics 137, 107770, 2024
162024
A semi-parametric conditional autoregressive joint value-at-risk and expected shortfall modeling framework incorporating realized measures
C Wang, R Gerlach, Q Chen
Quantitative Finance 23 (2), 309-334, 2023
102023
Modelling uncertainty in financial tail risk: a forecast combination and weighted quantile approach
G Storti, C Wang
Journal of Forecasting. In press., 2021
92021
A bayesian long short-term memory model for value at risk and expected shortfall joint forecasting
Z Li, MN Tran, C Wang, R Gerlach, J Gao
arXiv preprint arXiv:2001.08374, 2020
92020
A semi-parametric realized joint value-at-risk and expected shortfall regression framework
C Wang, R Gerlach, Q Chen
arXiv preprint arXiv:1807.02422, 2018
92018
Bayesian semi-parametric realized-care models for tail risk forecasting incorporating realized measures
R Gerlach, C Wang
arXiv preprint arXiv:1612.08488, 2016
62016
Semi-parametric financial risk forecasting incorporating multiple realized measures
R Peiris, C Wang, R Gerlach, MN Tran
Quantitative Finance 24 (12), 1823-1837, 2024
52024
A long short-term memory enhanced realized conditional heteroskedasticity model
C Liu, C Wang, MN Tran, R Kohn
Economic Modelling 142, 106922, 2025
42025
A Bayesian realized threshold measurement GARCH framework for financial tail risk forecasting
C Wang, R Gerlach
Journal of Forecasting 43 (1), 40-57, 2024
42024
Realized recurrent conditional heteroskedasticity model for volatility modelling
C Liu, C Wang, M Tran, R Kohn
22023
A multivariate semi-parametric portfolio risk optimization and forecasting framework
G Storti, C Wang
22022
Bayesian semi-parametric realized-care models for tail risk forecasting incorporating range and realized measures
R Gerlach, C Wang
University of Sydney Business School, Discipline of Business Analytics …, 2015
22015
Global Stock Market Volatility Forecasting Incorporating Dynamic Graphs and All Trading Days
Z Chi, J Gao, C Wang
Journal of Forecasting, 2025
12025
Graph Signal Processing for Global Stock Market Realized Volatility Forecasting
Z Chi, J Gao, C Wang
arXiv. org Papers, 2025
12025
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Articles 1–20