Causal Inference
The Akaike Information Criterion (AIC) is a statistical measure used to compare the goodness of fit of different models while penalizing for the number of parameters included. It helps in model selection, favoring models that achieve a good fit with fewer parameters to avoid overfitting. AIC is particularly useful in non-parametric contexts, such as bandwidth selection and local polynomial regression, where model complexity and data fit must be balanced.
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