Prediction Accuracy vs Model Interpretability
The Trade-Off Between Prediction Accuracy and Model Interpretability

Statistical learning methods vary in flexibility - some, like linear regression, can model only simple relationships, while others, like splines, boosting, and neural networks, can capture highly complex patterns.
Less flexible methods (e.g. linear regression, lasso) are often preferred for inference because they are more interpretable
More flexible methods (e.g. Generalized Additive Models, boosting, neural networks) can model complex relationships but are harder to interpret
For prediction-focused tasks, flexibility can help but also risks overfitting, sometimes making less flexible models more accurate.
Choosing the right method involves balancing flexibility, interpretability, and risk of overfitting.