Improve Orthogonal GARCH with Hidden Markov Model
Yufan Li

TL;DR
This paper enhances the OGARCH model by integrating a two-state Markov regime-switching process, enabling better adaptation to sudden market changes and improving forecasting accuracy in financial applications.
Contribution
The paper introduces a novel Markov regime-switching extension to OGARCH, effectively capturing systemic regime shifts and improving responsiveness to market breaks.
Findings
Extended model outperforms classic OGARCH in portfolio optimization.
Significantly improves predictive accuracy over traditional models.
Effectively captures abrupt market regime changes.
Abstract
Orthogonal Generalized Autoregressive Conditional Heteroskedasticity model (OGARCH) is widely used in finance industry to produce volatility and correlation forecasts. We show that the classic OGARCH model, nevertheless, tends to be too slow in reflecting sudden changes in market condition due to excessive persistence of the integral univariate GARCH processes. To obtain more flexibility to accommodate abrupt market changes, e.g. financial crisis, we extend classic OGARCH model by incorporating a two-state Markov regime-switching GARCH process. This novel construction allows us to capture recurrent systemic regime shifts. Empirical results show that this generalization resolves the problem of excessive persistency effectively and greatly enhances OGARCH's ability to adapt to sudden market breaks while preserving OGARCH's most attractive features such as dimension reduction and…
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Taxonomy
TopicsImage and Signal Denoising Methods · Financial Risk and Volatility Modeling · Advanced Data Compression Techniques
