lisäaineistusmenetelmät
Lisäaineistusmenetelmät, known in English as supplementary material methods or data augmentation techniques, are strategies used in various fields, particularly machine learning and data analysis, to increase the size and diversity of a training dataset. This is often necessary when the original dataset is too small to effectively train a model or to improve its robustness and generalization capabilities.
The core idea behind lisäaineistusmenetelmät is to generate new, synthetic data points from existing ones by
The primary benefit of using lisäaineistusmenetelmät is to prevent overfitting. When a model is trained on