Bayesian Cointegrated Vector Autoregression models incorporating Alpha-stable noise for inter-day price movements via Approximate Bayesian Computation
Gareth W. Peters, Balakrishnan B. Kannan, Ben Lasscock, Chris Mellen, and Simon Godsill

TL;DR
This paper introduces a Bayesian CVAR model with Alpha-stable noise to better capture inter-day price jumps and level shifts, improving estimation accuracy over traditional Gaussian models.
Contribution
It develops a novel matrix variate Bayesian CVAR mixture model incorporating Alpha-stable errors and provides a conjugate posterior for inter-day innovations, extending standard CVAR models.
Findings
Enhanced estimation accuracy with non-Gaussian level shifts
Effective modeling of inter-day jumps using Alpha-stable distributions
Demonstrated improvements on synthetic and real data
Abstract
We consider a statistical model for pairs of traded assets, based on a Cointegrated Vector Auto Regression (CVAR) Model. We extend standard CVAR models to incorporate estimation of model parameters in the presence of price series level shifts which are not accurately modeled in the standard Gaussian error correction model (ECM) framework. This involves developing a novel matrix variate Bayesian CVAR mixture model comprised of Gaussian errors intra-day and Alpha-stable errors inter-day in the ECM framework. To achieve this we derive a novel conjugate posterior model for the Scaled Mixtures of Normals (SMiN CVAR) representation of Alpha-stable inter-day innovations. These results are generalized to asymmetric models for the innovation noise at inter-day boundaries allowing for skewed Alpha-stable models. Our proposed model and sampling methodology is general, incorporating the current…
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