Fat-Tailed Risk Modeling

Modeling

Fat-tailed risk modeling is a quantitative methodology used to capture the probability of extreme market events that standard normal distribution models underestimate. This approach recognizes that asset returns in financial markets, especially cryptocurrencies, exhibit higher kurtosis than a Gaussian distribution. The model aims to provide a more accurate representation of tail risk, where large price movements occur more frequently than predicted by traditional methods.