Home > Research > Publications & Outputs > Spectral estimation for locally stationary time...
View graph of relations

Spectral estimation for locally stationary time series with missing observations

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

Spectral estimation for locally stationary time series with missing observations. / Knight, Marina A.; Nunes, Matthew; Nason, Guy P.
In: Statistics and Computing, Vol. 22, No. 4, 07.2012, p. 877-895.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Knight, MA, Nunes, M & Nason, GP 2012, 'Spectral estimation for locally stationary time series with missing observations', Statistics and Computing, vol. 22, no. 4, pp. 877-895. https://doi.org/10.1007/s11222-011-9256-x

APA

Vancouver

Knight MA, Nunes M, Nason GP. Spectral estimation for locally stationary time series with missing observations. Statistics and Computing. 2012 Jul;22(4):877-895. doi: 10.1007/s11222-011-9256-x

Author

Knight, Marina A. ; Nunes, Matthew ; Nason, Guy P. / Spectral estimation for locally stationary time series with missing observations. In: Statistics and Computing. 2012 ; Vol. 22, No. 4. pp. 877-895.

Bibtex

@article{274b112215804395b5dd81c23990de05,
title = "Spectral estimation for locally stationary time series with missing observations",
abstract = "Time series arising in practice often have an inherently irregular sampling structure or missing values, that can arise for example due to a faulty measuring device or complex time-dependent nature. Spectral decomposition of time series is a traditionally useful tool for data variability analysis. However, existing methods for spectral estimation often assume a regularly-sampled time series, or require modifications to cope with irregular or {\textquoteleft}gappy{\textquoteright} data. Additionally, many techniques also assume that the time series are stationary, which in the majority of cases is demonstrably not appropriate. This article addresses the topic of spectral estimation of a non-stationary time series sampled with missing data. The time series is modelled as a locally stationary wavelet process in the sense introduced by Nason et al. (J. R. Stat. Soc. B 62(2):271–292, 2000) and its realization is assumed to feature missing observations. Our work proposes an estimator (the periodogram) for the process wavelet spectrum, which copes with the missing data whilst relaxing the strong assumption of stationarity. At the centre of our construction are second generation wavelets built by means of the lifting scheme (Sweldens, Wavelet Applications in Signal and Image Processing III, Proc. SPIE, vol. 2569, pp. 68–79, 1995), designed to cope with irregular data. We investigate the theoretical properties of our proposed periodogram, and show that it can be smoothed to produce a bias-corrected spectral estimate by adopting a penalized least squares criterion. We demonstrate our method with real data and simulated examples.",
keywords = "Missing data, Nondecimated transform , Spectral estimation, Wavelet lifting",
author = "Knight, {Marina A.} and Matthew Nunes and Nason, {Guy P.}",
year = "2012",
month = jul,
doi = "10.1007/s11222-011-9256-x",
language = "English",
volume = "22",
pages = "877--895",
journal = "Statistics and Computing",
issn = "0960-3174",
publisher = "Springer Netherlands",
number = "4",

}

RIS

TY - JOUR

T1 - Spectral estimation for locally stationary time series with missing observations

AU - Knight, Marina A.

AU - Nunes, Matthew

AU - Nason, Guy P.

PY - 2012/7

Y1 - 2012/7

N2 - Time series arising in practice often have an inherently irregular sampling structure or missing values, that can arise for example due to a faulty measuring device or complex time-dependent nature. Spectral decomposition of time series is a traditionally useful tool for data variability analysis. However, existing methods for spectral estimation often assume a regularly-sampled time series, or require modifications to cope with irregular or ‘gappy’ data. Additionally, many techniques also assume that the time series are stationary, which in the majority of cases is demonstrably not appropriate. This article addresses the topic of spectral estimation of a non-stationary time series sampled with missing data. The time series is modelled as a locally stationary wavelet process in the sense introduced by Nason et al. (J. R. Stat. Soc. B 62(2):271–292, 2000) and its realization is assumed to feature missing observations. Our work proposes an estimator (the periodogram) for the process wavelet spectrum, which copes with the missing data whilst relaxing the strong assumption of stationarity. At the centre of our construction are second generation wavelets built by means of the lifting scheme (Sweldens, Wavelet Applications in Signal and Image Processing III, Proc. SPIE, vol. 2569, pp. 68–79, 1995), designed to cope with irregular data. We investigate the theoretical properties of our proposed periodogram, and show that it can be smoothed to produce a bias-corrected spectral estimate by adopting a penalized least squares criterion. We demonstrate our method with real data and simulated examples.

AB - Time series arising in practice often have an inherently irregular sampling structure or missing values, that can arise for example due to a faulty measuring device or complex time-dependent nature. Spectral decomposition of time series is a traditionally useful tool for data variability analysis. However, existing methods for spectral estimation often assume a regularly-sampled time series, or require modifications to cope with irregular or ‘gappy’ data. Additionally, many techniques also assume that the time series are stationary, which in the majority of cases is demonstrably not appropriate. This article addresses the topic of spectral estimation of a non-stationary time series sampled with missing data. The time series is modelled as a locally stationary wavelet process in the sense introduced by Nason et al. (J. R. Stat. Soc. B 62(2):271–292, 2000) and its realization is assumed to feature missing observations. Our work proposes an estimator (the periodogram) for the process wavelet spectrum, which copes with the missing data whilst relaxing the strong assumption of stationarity. At the centre of our construction are second generation wavelets built by means of the lifting scheme (Sweldens, Wavelet Applications in Signal and Image Processing III, Proc. SPIE, vol. 2569, pp. 68–79, 1995), designed to cope with irregular data. We investigate the theoretical properties of our proposed periodogram, and show that it can be smoothed to produce a bias-corrected spectral estimate by adopting a penalized least squares criterion. We demonstrate our method with real data and simulated examples.

KW - Missing data

KW - Nondecimated transform

KW - Spectral estimation

KW - Wavelet lifting

U2 - 10.1007/s11222-011-9256-x

DO - 10.1007/s11222-011-9256-x

M3 - Journal article

VL - 22

SP - 877

EP - 895

JO - Statistics and Computing

JF - Statistics and Computing

SN - 0960-3174

IS - 4

ER -