Network Data Pruning

Algorithm

Network Data Pruning, within cryptocurrency and derivatives markets, represents a systematic reduction of historical on-chain data utilized for model training and inference, focusing on retaining information crucial for predictive accuracy. This process addresses the challenges posed by blockchain’s ever-increasing data volume, mitigating computational costs and enhancing the efficiency of analytical processes. Effective implementation necessitates a nuanced understanding of data dependencies and the identification of redundant or less informative data points, particularly when applied to options pricing or risk assessment. Consequently, the selection of pruning criteria directly impacts the performance of downstream tasks, such as volatility surface construction and arbitrage detection.