This paper proves a Berry-Esseen theorem for sample quantiles of strongly-mixing random variables under a polynomial mixing rate. The rate of normal approximation is shown to be O(n-1/2) as n → ∞, where n denotes the sample size. This result is in sharp contrast to the case of the sample mean of strongly-mixing random variables where the rate O(n -1/2) is not known even under an exponential strong mixing rate. The main result of the paper has applications in finance and econometrics as financial time series data often are heavy-tailed and quantile based methods play an important role in various problems in finance, including hedging and risk management. © Institute of Mathematical Statistics, 2009.
CITATION STYLE
Lahiri, S. N., & Sun, S. (2009). A berry-esseen theorem for sample quantiles under weak dependence. Annals of Applied Probability, 19(1), 108–126. https://doi.org/10.1214/08-AAP533
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