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Some empirical results using block bootstrap in estimating the coefficients of a periodic autoregressive model Cover

Some empirical results using block bootstrap in estimating the coefficients of a periodic autoregressive model

Open Access
|Sep 2023

Abstract

The bootstrap proposed by Efron (1979) resulted a useful method in estimating the distribution of an estimator or a test statistic by resampling the data in the case of independent and identically distributed observations. Although it was not as effective in the case of dependent data as in the case of independent and identically distributed data, an adaptation was obtained using the block bootstrap. The block bootstrap consists in dividing the data into blocks of observations and then resampling these blocks with replacement. When resampling periodic data, we must take in consideration the periodicity present.

Periodically correlated time series and in particular those related with PAR processes have been object of many recent studies due to numerous applications in real data problems. The aim of this paper is to use a block bootstrap procedure proposed, Block Bootstrap of the Residuals, in the case of PAR (Periodic Autoregressive) models. The results obtained in the case of estimating the coefficients in a PAR model studied are very good and are characterized by small values of Bias, Mean Squared Error and Standard Deviation. Also the bootstrap estimations obtained are closer to the true values than the usual classic point estimations.

DOI: https://doi.org/10.2478/bjir-2023-0004 | Journal eISSN: 2411-9725 | Journal ISSN: 2410-759X
Language: English
Page range: 34 - 41
Published on: Sep 21, 2023
Published by: International Institute for Private, Commercial and Competition Law
In partnership with: Paradigm Publishing Services
Publication frequency: 3 issues per year

© 2023 Lorena Margo Zeq, published by International Institute for Private, Commercial and Competition Law
This work is licensed under the Creative Commons Attribution-NonCommercial 4.0 License.