Abstract:
Based on the law of large numbers and the central limit theorem under
nonlinear expectation, we introduce a new method of using $G$-normal
distribution to measure financial risks. Applying max-mean estimators and
a small windows method, we establish autoregressive models to determine the
parameters of $G$-normal distribution, i.e., the return, maximal, and
minimal volatilities of the time series. Utilizing the value at risk (VaR)
predictor model under $G$-normal distribution, we show that the $G$-VaR
model gives an excellent performance in predicting the VaR for a benchmark
dataset comparing to many well-known VaR predictors.