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Interval Estimation for a First†Order Positive Autoregressive Process

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  • Wei†Cheng Hsiao
  • Hao†Yun Huang
  • Ching†Kang Ing

Abstract

We are interested in constructing confidence intervals for the autoregressive (AR) coefficient of a first†order AR model with i.i.d. positive errors via an extreme value estimate (EVE). We assume that the error distribution has a density function fε(x) behaving like b1,0xα0−1 as x→0, where b1,0 and α0 are unknown positive constants. These specifications imply that the EVE has a limiting distribution depending on b1,0 and α0 from which only an infeasible interval estimate can be obtained. To alleviate this difficulty, we introduce a novel procedure to estimate these two constants and establish the desired consistency. This consistency result enables us not only to gain a better understanding of the underlying error distribution, but also to construct a feasible, asymptotically valid confidence interval of the AR coefficient, without resorting to a bootstrap procedure described in Datta and McCormick (1995). The performance of the proposed interval estimate is further illustrated through simulation studies and real data analysis.

Suggested Citation

  • Wei†Cheng Hsiao & Hao†Yun Huang & Ching†Kang Ing, 2018. "Interval Estimation for a First†Order Positive Autoregressive Process," Journal of Time Series Analysis, Wiley Blackwell, vol. 39(3), pages 447-467, May.
  • Handle: RePEc:bla:jtsera:v:39:y:2018:i:3:p:447-467
    DOI: 10.1111/jtsa.12297
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