Adaptive information-based methods for determining the co-integration rank in heteroskedastic VAR models
H. Peter Boswijk, Giuseppe Cavaliere, Luca De Angelis, A. M. Robert, Taylor

TL;DR
This paper introduces adaptive information-based methods for accurately determining the co-integration rank and lag length in heteroskedastic VAR models, improving finite sample performance over traditional techniques.
Contribution
It develops adaptive information criteria and bootstrap tests that jointly estimate lag length and co-integration rank in heteroskedastic VARs, with proven weak consistency.
Findings
Adaptive methods outperform traditional tests in finite samples.
Monte Carlo simulations demonstrate efficiency gains.
Empirical application to U.S. term structure illustrates practical benefits.
Abstract
Standard methods, such as sequential procedures based on Johansen's (pseudo-)likelihood ratio (PLR) test, for determining the co-integration rank of a vector autoregressive (VAR) system of variables integrated of order one can be significantly affected, even asymptotically, by unconditional heteroskedasticity (non-stationary volatility) in the data. Known solutions to this problem include wild bootstrap implementations of the PLR test or the use of an information criterion, such as the BIC, to select the co-integration rank. Although asymptotically valid in the presence of heteroskedasticity, these methods can display very low finite sample power under some patterns of non-stationary volatility. In particular, they do not exploit potential efficiency gains that could be realised in the presence of non-stationary volatility by using adaptive inference methods. Under the assumption of a…
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Taxonomy
TopicsSpatial and Panel Data Analysis
