Data Cleaning Effectiveness

Methodology

Quantitative frameworks evaluate the success of raw input refinement by measuring the reduction of noise and anomalous artifacts within high-frequency cryptocurrency order books. Analysts prioritize the elimination of duplicate timestamps and ghost ticks to ensure that algorithmic models reflect authentic market liquidity. This process acts as the essential precursor to any robust backtesting protocol for options trading strategies.