Marked empirical processes for non-stationary time series (1312.3120v1)
Abstract: Consider a first-order autoregressive process $X_i=\beta X_{i-1}+\varepsilon_i,$ where $\varepsilon_i=G(\eta_i,\eta_{i-1},\ldots)$ and $\eta_i,i\in\mathbb{Z}$ are i.i.d. random variables. Motivated by two important issues for the inference of this model, namely, the quantile inference for $H_0: \beta=1$, and the goodness-of-fit for the unit root model, the notion of the marked empirical process $\alpha_n(x)=\frac{1}{n}\sum_{i=1}ng(X_i/a_n)I(\varepsilon_i\leq x),x\in\mathbb{R}$ is investigated in this paper. Herein, $g(\cdot)$ is a continuous function on $\mathbb{R}$ and ${a_n}$ is a sequence of self-normalizing constants. As the innovation ${\varepsilon_i}$ is usually not observable, the residual marked empirical process $\hat {\alpha}n(x)=\frac{1}{n}\sum{i=1}ng(X_i/a_n)I(\hat{\varepsilon}_i\l eq x),x\in\mathbb{R},$ is considered instead, where $\hat{\varepsilon}i=X_i-\hat{\beta}X{i-1}$ and $\hat{\beta}$ is a consistent estimate of $\beta.$ In particular, via the martingale decomposition of stationary process and the stochastic integral result of Jakubowski (Ann. Probab. 24 (1996) 2141-2153), the limit distributions of $\alpha_n(x)$ and $\hat{\alpha}_n(x)$ are established when ${\varepsilon_i}$ is a short-memory process. Furthermore, by virtue of the results of Wu (Bernoulli 95 (2003) 809-831) and Ho and Hsing (Ann. Statist. 24 (1996) 992-1024) of empirical process and the integral result of Mikosch and Norvai\v{s}a (Bernoulli 6 (2000) 401-434) and Young (Acta Math. 67 (1936) 251-282), the limit distributions of $\alpha_n(x)$ and $\hat{\alpha}_n(x)$ are also derived when ${\varepsilon_i}$ is a long-memory process.
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