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Featured researches published by Edward M.H. Lin.


Journal of Forecasting | 2011

Bayesian Forecasting for Financial Risk Management, Pre and Post the Global Financial Crisis

Cathy W. S. Chen; Richard Gerlach; Edward M.H. Lin; W. C. W. Lee

Value-at-Risk (VaR) forecasting via a computational Bayesian framework is considered. A range of parametric models are compared, including standard, threshold nonlinear and Markov switching GARCH specifications, plus standard and nonlinear stochastic volatility models, most considering four error probability distributions: Gaussian, Student-t, skewed-t and generalized error distribution. Adaptive Markov chain Monte Carlo methods are employed in estimation and forecasting. A portfolio of four Asia-Pacific stock markets is considered. Two forecasting periods are evaluated in light of the recent global financial crisis. Results reveal that: (i) GARCH models out-performed stochastic volatility models in almost all cases; (ii) asymmetric volatility models were clearly favoured pre-crisis; while at the 1% level during and post-crisis, for a 1 day horizon, models with skewed-t errors ranked best, while IGARCH models were favoured at the 5% level; (iii) all models forecasted VaR less accurately and anti-conservatively post-crisis


Computational Statistics & Data Analysis | 2008

Volatility forecasting using threshold heteroskedastic models of the intra-day range

Cathy W. S. Chen; Richard Gerlach; Edward M.H. Lin

An effective approach for forecasting return volatility via threshold nonlinear heteroskedastic models of the daily asset price range is provided. The range is defined as the difference between the highest and lowest log intra-day asset price. A general model specification is proposed, allowing the intra-day high-low price range to depend nonlinearly on past information, or an exogenous variable such as US market information. The model captures aspects such as sign or size asymmetry and heteroskedasticity, which are commonly observed in financial markets. The focus is on parameter estimation, inference and volatility forecasting in a Bayesian framework. An MCMC sampling scheme is employed for estimation and shown to work well in simulation experiments. Finally, competing range-based and return-based heteroskedastic models are compared via out-of-sample forecast performance. Applied to six international financial market indices, the range-based threshold heteroskedastic models are well supported by the data in terms of finding significant threshold nonlinearity, diagnostic checking and volatility forecast performance under various volatility proxies.


Journal of Forecasting | 2009

Volatility Forecasting with Double Markov Switching GARCH Models

Cathy W. S. Chen; Mike K. P. So; Edward M.H. Lin

This paper investigates inference and volatility forecasting using a Markov switching heteroscedastic model with a fat-tailed error distribution to analyze asymmetric effects on both the conditional mean and conditional volatility of financial time series. The motivation for extending the Markov switching GARCH model, previously developed to capture mean asymmetry, is that the switching variable, assumed to be a first-order Markov process, is unobserved. The proposed model extends this work to incorporate Markov switching in the mean and variance simultaneously. Parameter estimation and inference are performed in a Bayesian framework via a Markov chain Monte Carlo scheme. We compare competing models using Bayesian forecasting in a comparative value-at-risk study. The proposed methods are illustrated using both simulations and eight international stock market return series. The results generally favor the proposed double Markov switching GARCH model with an exogenous variable. Copyright


Quantitative Finance | 2014

Bivariate asymmetric GARCH models with heavy tails and dynamic conditional correlations

S. T. Boris Choy; Cathy W. S. Chen; Edward M.H. Lin

A bivariate generalized autoregressive conditional heteroskedastic model with dynamic conditional correlation and leverage effect (DCC-GJR-GARCH) for modelling financial time series data is considered. For robustness it is helpful to assume a multivariate Student-t distribution for the innovation terms. This paper proposes a new modified multivariate t-distribution which is a robustifying distribution and offers independent marginal Student-t distributions with different degrees of freedom, thereby highlighting the relationship among different assets. A Bayesian approach with adaptive Markov chain Monte Carlo methods is used for statistical inference. A simulation experiment illustrates good performance in estimation over reasonable sample sizes. In the empirical studies, the pairwise relationship between the Australian stock market and foreign exchange market, and between the US stock market and crude oil market are investigated, including out-of-sample volatility forecasts.


Archive | 2013

A Bayesian Perspective on Mixed GARCH Models with Jumps

Cathy W. S. Chen; Edward M.H. Lin; Yi-Ru Lin

In this paper, generalized autoregressive conditionally heteroskedastic (GARCH) models with jumps are investigated, where jump arrivals are time inhomogeneous and state-dependent. These models permit the conditional jump intensity to be time-varying and clustering, and allow volatility effects in the jump component. A Bayesian approach is taken and an efficient adaptive sampling scheme is employed for inference. A Bayesian posterior model comparison procedure is used to compare the proposed model with the standard GARCH model. The proposed methods are illustrated using both simulated and international stock market return series. Our results indicate that the mixed GARCH-Jump models provide a better fit for the dynamics of the daily returns in the US and two Asian markets.


Journal of Forecasting | 2012

Bayesian Forecasting for Financial Risk Management, Pre and Post the Global Financial Crisis: Bayesian Forecasting for Financial Risk Management

Cathy W. S. Chen; Richard Gerlach; Edward M.H. Lin; Wen-Cherng Lee


International Journal of Forecasting | 2012

Forecasting volatility with asymmetric smooth transition dynamic range models

Edward M.H. Lin; Cathy W. S. Chen; Richard Gerlach


Archive | 2009

Bayesian Estimation for Parsimonious Threshold Autoregressive Models in R

Cathy W. S. Chen; Edward M.H. Lin; Feng-Chi Liu; Richard Gerlach


Journal of Forecasting | 2016

Bayesian Assessment of Dynamic Quantile Forecasts

Richard Gerlach; Cathy W. S. Chen; Edward M.H. Lin


Computational Statistics & Data Analysis | 2014

Bayesian estimation of smoothly mixing time-varying parameter GARCH models

Cathy W. S. Chen; Richard Gerlach; Edward M.H. Lin

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Mike K. P. So

Hong Kong University of Science and Technology

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