A persistence‐based Wold‐type decomposition for stationary time series
This paper shows how to decompose weakly stationary time series into the sum, across time scales, of uncorrelated components associated with different degrees of persistence. In particular, we provide an
Extended Wold Decomposition based on an isometric
scaling operator that makes averages of process innovations. Thanks to the uncorrelatedness of components, our representation of a time series naturally induces a persistence‐based variance decomposition of any weakly stationary process. We provide two applications to show how the tools developed in this paper can shed new light on the determinants of the variability of economic and financial time series.
Year of publication: |
2020
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Authors: | Ortu, Fulvio ; Severino, Federico ; Tamoni, Andrea ; Tebaldi, Claudio |
Published in: |
Quantitative Economics. - The Econometric Society, ISSN 1759-7323, ZDB-ID 2569569-1. - Vol. 11.2020, 1, p. 203-230
|
Publisher: |
The Econometric Society |
Saved in:
Online Resource
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