## Abstract The authors consider a semiparametric partially linear regression model with serially correlated errors. They propose a new way of estimating the error structure which has the advantage that it does not involve any nonparametric estimation. This allows them to develop an inference proce
Inference for regression models with errors from a non-invertible MA(1) process
✍ Scribed by Mei-Ching Chen; Richard A. Davis; Li Song
- Publisher
- John Wiley and Sons
- Year
- 2010
- Tongue
- English
- Weight
- 312 KB
- Volume
- 30
- Category
- Article
- ISSN
- 0277-6693
- DOI
- 10.1002/for.1198
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✦ Synopsis
Abstract
This paper considers maximum likelihood estimation in a regression model when the errors follow a first‐order moving average model which is non‐invertible or nearly non‐invertible. The latter corresponds to a moving average parameter θ that is equal to or close to 1. The joint limiting distribution of the maximum likelihood estimators b̂ and $\hat\theta$ of the regression parameter vector b and the moving average parameter θ is described. Unlike the case with standard time series models, the limiting distribution of b̂ depends on whether or not θ is being estimated. Specifically, the limit distribution of b̂ is non‐normal if θ is also being estimated and is normal if θ is unestimated and equal to 1. The asymptotic behavior of the generalized likelihood ratio statistic for testing θ = 1 vs. θ < 1 is also studied and shown to perform well compared to the locally best invariant unbiased test of Tanaka (1990). We also indicate extensions to seasonal moving average models with a unit root. Copyright © 2010 John Wiley & Sons, Ltd.
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