Historical Data Pruning

Algorithm

Historical data pruning, within cryptocurrency and derivatives markets, represents a systematic reduction of the time series used for model training and backtesting. This process addresses the challenges posed by non-stationarity inherent in financial data, particularly in nascent asset classes like cryptocurrencies, where market regimes shift rapidly. Effective pruning strategies prioritize recent data, acknowledging its greater relevance to current market dynamics, while mitigating the influence of obsolete patterns. Consequently, the selection of an appropriate pruning window directly impacts the robustness and predictive accuracy of trading algorithms and risk management systems.