Corrected portmanteau tests for VAR models with time-varying variance
Valentin Patilea, Hamdi Ra\"issi

TL;DR
This paper develops corrected portmanteau tests for VAR models with deterministic, time-varying volatility, providing more reliable goodness-of-fit assessments in economic and financial data.
Contribution
It introduces modified portmanteau tests based on ALS residual autocorrelations and derives their asymptotic properties under heteroscedasticity.
Findings
OLS residual autocorrelations have non-standard asymptotic distributions.
Modified tests improve size accuracy under heteroscedasticity.
Monte Carlo simulations confirm the effectiveness of the proposed methods.
Abstract
The problem of test of fit for Vector AutoRegressive (VAR) processes with unconditionally heteroscedastic errors is studied. The volatility structure is deterministic but time-varying and allows for changes that are commonly observed in economic or financial multivariate series. Our analysis is based on the residual autocovariances and autocorrelations obtained from Ordinary Least Squares (OLS), Generalized Least Squares (GLS)and Adaptive Least Squares (ALS) estimation of the autoregressive parameters. The ALS approach is the GLS approach adapted to the unknown time-varying volatility that is then estimated by kernel smoothing. The properties of the three types of residual autocovariances and autocorrelations are derived. In particular it is shown that the ALS and GLS residual autocorrelations are asymptotically equivalent. It is also found that the asymptotic distribution of the OLS…
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Taxonomy
TopicsMonetary Policy and Economic Impact · Financial Risk and Volatility Modeling · Market Dynamics and Volatility
