Quantile Regression Analysis

Analysis

Quantile Regression Analysis, within cryptocurrency, options, and derivatives, extends beyond traditional Ordinary Least Squares regression by modeling the conditional quantile functions of the response variable. This approach is particularly valuable when distributional assumptions are violated, a common occurrence in financial time series exhibiting skewness and kurtosis. Consequently, it allows for a more nuanced understanding of risk exposures across different market conditions, identifying potential tail risks not captured by mean-based models. Its application provides insights into Value at Risk and Expected Shortfall calculations, crucial for portfolio management and regulatory compliance.