Bootstrap of Kernel Smoothing in Quantile Autoregression Process
Abstract
The paper considers the problem of bootstrapping kernel estimator
of conditional quantiles for time series, under independent and identically
distributed errors, by mimicking the kernel smoothing in nonparametric
autoregressive scheme. A quantile autoregression bootstrap
generating process is constructed and the estimator given. Under appropriate
assumptions, the bootstrap estimator is shown to be consistent.