Simulation Accuracy

Algorithm

Simulation accuracy, within cryptocurrency and derivatives, fundamentally reflects the fidelity of a computational model to real-world market behavior. This assessment relies on rigorous backtesting against historical data, evaluating the model’s capacity to replicate observed price movements and statistical properties. Quantifying this accuracy often involves metrics like root mean squared error (RMSE) or Sharpe ratio comparisons between simulated and actual trading performance, informing confidence in predictive capabilities.