Dynamic Correlation Modeling

Model

This advanced quantitative technique estimates the time-varying relationship between asset returns, moving beyond static historical averages to capture evolving market linkages. For crypto derivatives, it acknowledges that the correlation between Bitcoin and Ethereum, for instance, is not constant but shifts based on market regime and liquidity conditions. Implementing such a framework often involves using multivariate GARCH extensions or state-space approaches.