Dimensionality Reduction Techniques

Algorithm

Principal Component Analysis functions as a primary mathematical framework for distilling high-dimensional crypto market datasets into orthogonal components. This process identifies the directions of maximum variance within historical price series or order book data while discarding noise that lacks predictive power. Traders employ these structured inputs to refine signal-to-noise ratios in quantitative execution models.