Parameter Estimation of Autoregressive Models Using the Iteratively Robust Filtered Fast-τ Method
(2014) In Communications in Statistics: Theory and Methods 43(21). p.4445-4470- Abstract
- Utilizing time series modeling entails estimating the model parameters and dispersion. Classical estimators for autocorrelated observations are sensitive to presence of different types of outliers and lead to bias estimation and misinterpretation. It is important to present robust methods for parameters estimation which are not influenced by contaminations. In this article, an estimation method entitled Iteratively Robust Filtered Fast− τ(IRFFT) is proposed for general autoregressive models. In comparison to other commonly accepted methods, this method is more efficient and has lower sensitivity to contaminations due to having desirable robustness properties. This has been demonstrated by applying MSE, influence function, and breakdown... (More)
- Utilizing time series modeling entails estimating the model parameters and dispersion. Classical estimators for autocorrelated observations are sensitive to presence of different types of outliers and lead to bias estimation and misinterpretation. It is important to present robust methods for parameters estimation which are not influenced by contaminations. In this article, an estimation method entitled Iteratively Robust Filtered Fast− τ(IRFFT) is proposed for general autoregressive models. In comparison to other commonly accepted methods, this method is more efficient and has lower sensitivity to contaminations due to having desirable robustness properties. This has been demonstrated by applying MSE, influence function, and breakdown point criteria. (Less)
Please use this url to cite or link to this publication:
https://lup.lub.lu.se/record/5368076
- author
- Shariati Fokalaei, Nima LU ; Shahriari, Hamid and Shafaei, Rasoul
- organization
- publishing date
- 2014
- type
- Contribution to journal
- publication status
- published
- subject
- keywords
- Time series, Autocorrelation, Robust estimation, Outlier, Robust filtering, τ− estimate
- in
- Communications in Statistics: Theory and Methods
- volume
- 43
- issue
- 21
- pages
- 4445 - 4470
- publisher
- Marcel Dekker
- external identifiers
-
- scopus:84910619350
- ISSN
- 0361-0926
- DOI
- 10.1080/03610926.2012.724504
- language
- English
- LU publication?
- yes
- id
- 600d52e0-ef9c-4c76-9453-2278dcb24608 (old id 5368076)
- date added to LUP
- 2016-04-01 10:43:32
- date last changed
- 2022-03-04 22:18:04
@article{600d52e0-ef9c-4c76-9453-2278dcb24608, abstract = {{Utilizing time series modeling entails estimating the model parameters and dispersion. Classical estimators for autocorrelated observations are sensitive to presence of different types of outliers and lead to bias estimation and misinterpretation. It is important to present robust methods for parameters estimation which are not influenced by contaminations. In this article, an estimation method entitled Iteratively Robust Filtered Fast− τ(IRFFT) is proposed for general autoregressive models. In comparison to other commonly accepted methods, this method is more efficient and has lower sensitivity to contaminations due to having desirable robustness properties. This has been demonstrated by applying MSE, influence function, and breakdown point criteria.}}, author = {{Shariati Fokalaei, Nima and Shahriari, Hamid and Shafaei, Rasoul}}, issn = {{0361-0926}}, keywords = {{Time series; Autocorrelation; Robust estimation; Outlier; Robust filtering; τ− estimate}}, language = {{eng}}, number = {{21}}, pages = {{4445--4470}}, publisher = {{Marcel Dekker}}, series = {{Communications in Statistics: Theory and Methods}}, title = {{Parameter Estimation of Autoregressive Models Using the Iteratively Robust Filtered Fast-τ Method}}, url = {{http://dx.doi.org/10.1080/03610926.2012.724504}}, doi = {{10.1080/03610926.2012.724504}}, volume = {{43}}, year = {{2014}}, }