Cointegration with Occasionally Binding Constraints
In the literature on nonlinear cointegration, a long-standing open problem relates to how a (nonlinear) vector autoregression, which provides a unified description of the short- and long-run dynamics of a vector of time series, can generate 'nonlinear cointegration' in the profound sense o...
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
17.11.2022
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2211.09604 |
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Summary: | In the literature on nonlinear cointegration, a long-standing open problem
relates to how a (nonlinear) vector autoregression, which provides a unified
description of the short- and long-run dynamics of a vector of time series, can
generate 'nonlinear cointegration' in the profound sense of those series
sharing common nonlinear stochastic trends. We consider this problem in the
setting of the censored and kinked structural VAR (CKSVAR), which provides a
flexible yet tractable framework within which to model time series that are
subject to threshold-type nonlinearities, such as those arising due to
occasionally binding constraints, of which the zero lower bound (ZLB) on
short-term nominal interest rates provides a leading example. We provide a
complete characterisation of how common linear and nonlinear stochastic trends
may be generated in this model, via unit roots and appropriate generalisations
of the usual rank conditions, providing the first extension to date of the
Granger-Johansen representation theorem to a nonlinearly cointegrated setting,
and thereby giving the first successful treatment of the open problem. The
limiting common trend processes include regulated, censored and kinked Brownian
motions, none of which have previously appeared in the literature on
cointegrated VARs. Our results and running examples illustrate that the CKSVAR
is capable of supporting a far richer variety of long-run behaviour than is a
linear VAR, in ways that may be particularly useful for the identification of
structural parameters. |
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DOI: | 10.48550/arxiv.2211.09604 |