Estimation in autoregressivemodels based on autoregressionrank scores
Authors:
Faouzi El Bantli -
a;
Marc Hallin -
b
| Affiliations: | a I.S.R.O, Universit Libre de Bruxelles, Brussels, Belgium |
b I.S.R.O., E.CA.R.E.S., and D partement de Mathematique, Universit Libre de Bruxelles, Brussels, Belgium |
DOI:
10.1080/10485250108832871
Publication Frequency:
8 issues per year
Subjects:
Mathematical Economics;
Mathematical Finance;
Medical Statistics;
Statistical Theory & Methods;
Statistics;
Statistics for the Biological Sciences;
Stochastic Models & Processes;
Formats available:
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(English)
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Abstract
We propose a new class of estimates of the autoregression parameter in AR p models, based on autoregression rank scores. These estimators are based on linear programming algorithms, combined with a discrete numerical optimization step. They are shown to be asymptotically equivalent to the R-estimators of autoregressive parameters proposed by Koul and Saleh [l]. In contrast with the latter, however, our autoregression rank score estimators are autoregression invariant, so that each component of the parameter can be estimated separately. This property allows for substituting p one-dimensional discrete optimization steps for a unique pdimensional one, which is computationally simpler
|
| Keywords: Autoregression quantiles; Autoregression rank scores; R-estimators; Uniform asymptotic linearity |
| view references (19) |

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Libre de Bruxelles, Brussels, Belgium
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