What primary model characteristic sets the potential for overfitting?
Answer
The complexity, or capacity, of the model relative to the data.
Overfitting is most directly caused by a model possessing excessive flexibility, such as having too many layers or neurons, which grants it too many parameters or degrees of freedom relative to the complexity needed to model the true underlying relationships.

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