Tree Based Methods

Methodology

Tree-based methods employ hierarchical decision structures to partition data into subsets based on feature values. In the domain of cryptocurrency derivatives, these recursive splits enable traders to map non-linear relationships between underlying asset spot prices and option premiums. These models utilize binary divisions to refine predictions, allowing for the isolation of specific regimes that dictate market behavior. By mapping complex input variables to discrete outcomes, analysts derive precise rules for classifying volatility surfaces and liquidity patterns.