ristikvalidointi
Ristikvalidointi, often translated as cross-validation, is a resampling technique used in machine learning and statistics to evaluate the performance of a predictive model and to assess how well it will generalize to an independent dataset. The primary goal of ristikvalidointi is to provide a more robust estimate of model performance than a single train-test split, helping to mitigate overfitting.
There are several common types of ristikvalidointi. The most basic is k-fold ristikvalidointi. In this method,
Another variation is leave-one-out cross-validation (LOOCV), which is an extreme case of k-fold ristikvalidointi where k