Pj. Bickel et P. Buhlmann, A new mixing notion and functional central limit theorems for a sieve bootstrap in time series, BERNOULLI, 5(3), 1999, pp. 413-446
We study a bootstrap method for stationary real-valued time series, which i
s based on the sieve of autoregressive: processes. Given a sample X-1,...,X
-n from a linear process {X-t}(t is an element of Z), We approximate the un
derlying process by an autoregressive model with order p = p(n),where p(n)
--> infinity p(n) = o(n) as the sample size n --> infinity. Based on such a
model, a bootstrap process {X-t*}(t is an element of Z) is constructed fro
m which one can draw samples of any size.
We show that, with high probability, such a sieve bootstrap process (X-t*)(
t is an element of Z) satisfies a new type of mixing condition. This implie
s that many results for stationary mixing sequences carry over to the sieve
bootstrap process. As an example we derive a functional central limit theo
rem under a bracketing condition.