Model Complexity Reduction

Optimization

Model complexity reduction involves the systematic stripping of redundant parameters from quantitative frameworks to enhance computational speed and model stability. In the context of cryptocurrency derivatives, this process mitigates the risk of overfitting historical noise in highly volatile order books. Traders utilize these refined structures to achieve more reliable pricing outputs when dealing with non-linear payoff functions.