Algorithmic Bias
Meaning ⎊ Systematic errors in model output stemming from flawed assumptions or unrepresentative historical training data.
Prediction Decay
Meaning ⎊ The loss of predictive accuracy as historical patterns captured by a model become less relevant to current market dynamics.
Normal Distribution Assumptions
Meaning ⎊ The statistical premise that asset returns cluster around a mean in a symmetrical bell curve pattern.
Overfitting and Data Snooping
Meaning ⎊ The danger of creating models that perform well on historical data by capturing noise instead of true market patterns.
Sample Bias
Meaning ⎊ A statistical error where the data used for analysis is not representative of the actual market environment.
Walk Forward Analysis
Meaning ⎊ A dynamic testing method using rolling data windows to evaluate strategy robustness and reduce curve fitting.
