generalisatiegap
Generalisatiegap refers to a phenomenon observed in machine learning where a model performs well on the data it was trained on but struggles to generalize to new, unseen data. This discrepancy highlights a fundamental challenge in building effective AI systems. The model has effectively "memorized" the training set rather than learning the underlying patterns and relationships that would allow it to make accurate predictions on novel examples.
Several factors can contribute to a generalisatiegap. One common cause is overfitting, where the model is too
Addressing the generalisatiegap involves various techniques. Data augmentation, which artificially increases the size and diversity of