Machine Learning Basic Concepts - edX
1.Training set is a set of examples used for learning a model (e.g., a classi cation model). 2.Validation set is a set of examples that cannot be used for learning the model but can help tune model parameters (e.g., selecting K in K-NN). Validation helps control over tting.
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