Statistical Inference
The Akaike Information Criterion (AIC) is a statistical measure used to compare different models and determine which one best explains a given dataset while penalizing for model complexity. It provides a way to balance the trade-off between goodness of fit and simplicity, allowing researchers to select models that are both accurate and parsimonious. Lower AIC values indicate a better model fit, making it a widely used tool in model selection processes.
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