Risk Model Failure

Assumption

Quantitative frameworks underpinning crypto derivatives often rely on historical distributions to forecast future volatility. When underlying assets exhibit fat-tailed behavior not captured by Gaussian logic, the foundational premise of the model collapses. These failures occur because extreme market events in digital assets frequently breach the bounds of expected probabilistic ranges.