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Window Length Selection and Signal-Noise Separation and Reconstruction in Singular Spectrum Analysis

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posted on 2022-11-04, 03:53 authored by Md Atikur Rahman Khan, D.S. Poskitt
In Singular Spectrum Analysis (SSA) window length is a critical tuning parameter that must be assigned by the practitioner. This paper provides a theoretical analysis of signal-noise separation and reconstruction in SSA that can serve as a guide to optimal window choice. We establish numerical bounds on the mean squared reconstruction error and present their almost sure limits under very general regularity conditions on the underlying data generating mechanism. We also provide asymptotic bounds for the mean squared separation error. Evidence obtained using simulation experiments indicates that the theoretical properties are reflected in observed behaviour, even in relatively small samples, and the results indicate how an optimal choice for the window length can be made.

History

Classification-JEL

C18, C22, C52

Creation date

2011-10

Working Paper Series Number

23/11

Length

20 pages

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2011-23

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