säännöllistämön
Säännöllistämön is a Finnish term that translates to "regularization term" or "regularizer" in English, commonly used in the context of machine learning and statistical modeling. It refers to an additional component added to the loss function of a model during training. The primary purpose of a säännöllistämön is to prevent overfitting, a phenomenon where a model learns the training data too well, including its noise and outliers, leading to poor performance on unseen data.
By incorporating a säännöllistämön, the model is penalized for having excessively complex parameters or weights. This