krossväärtustamist
Krossväärtustamist, known in English as cross-validation, is a statistical technique used to assess the generalizability and performance of predictive models. It involves partitioning a dataset into multiple subsets or folds. The model is trained on a subset of these and validated on the remaining part, with the process repeated several times to ensure robustness. This method provides a reliable estimate of how well a model will perform on unseen data by minimizing overfitting and bias.
The most common form of krossväärtustamist is k-fold cross-validation, where the dataset is divided into k equally
Krossväärtustamist is particularly valuable in machine learning and data science for model selection and hyperparameter tuning.
While krossväärtustamist enhances model assessment, it can be computationally intensive for large datasets or complex models.