Asymptotics for the random coefficient first-order autoregressive model with possibly heavy-tailed innovations
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摘要
Consider a random coefficient AR(1) model, Xt=(ρn+ϕn)Xt−1+ut, where {ρn,n≥1} is a sequence of real numbers, {ϕn,n≥1} is a sequence of random variables, and the innovations of the model form a sequence of i.i.d. random variables belonging to the domain of attraction of the normal law. By imposing some weaker conditions, the conditional least squares estimator of the autoregressive coefficient ρn is achieved, and shown to be asymptotically normal by allowing the second moment of the innovation to be possibly infinite.
论文关键词:62M10,60F05,Asymptotic normality,Conditional least squares estimator,Domain of attraction of the normal law,Random coefficient AR(1),Self-normalization
论文评审过程:Received 1 January 2014, Revised 9 January 2015, Available online 16 February 2015.
论文官网地址:https://doi.org/10.1016/j.cam.2015.02.020