Suréchantillonnage is a statistical technique used primarily in the field of apprentissage automatique and analyse de données to address déséquilibre des classes within datasets. Class imbalance occurs when certain categories (or classes) in a dataset are underrepresented compared to others, which can lead to biased models that perform poorly on minority classes.
En suréchantillonnage, le nombre d'instances dans le classe minoritaire is increased to match that of the majority class. This can be achieved through various methods, such as:
- Suréchantillonnage aléatoire : This involves randomly duplicating examples from the minority class until the desired balance is achieved. While simple and effective, it may lead to overfitting puisque les mêmes exemples sont répétés.
- SMOTE (Synthetic Minority Over-sampling Technique) : Instead of duplicating existing data points, SMOTE generates synthetic samples by interpolating between existing instances of the minority class. This helps create a more diverse dataset while maintaining the characteristics of the minority class.
- ADASYN (Adaptive Synthetic Sampling) : This method builds on SMOTE by focusing on generating synthetic data for those instances of the minority class that are harder to classify, thus improving the overall performance du modèle.
Le suréchantillonnage peut considérablement améliorer la performance du modèle metrics like precision, recall, and F1-score for minority classes. However, it is important to note that oversampling may also introduce noise and overfitting if not applied carefully. Therefore, it is often used in conjunction with other techniques such as cross-validation and regularization to ensure robust model training.