generaliseerumisvõime
Generaliseerumisvõime, often translated as generalization ability, refers to the capacity of a system, algorithm, or model to perform well on new, unseen data after being trained on a specific dataset. This is a fundamental concept in machine learning and artificial intelligence, where the primary goal is to create models that can learn patterns from training data and then apply those patterns to make accurate predictions or decisions on data they have not encountered before.
A system with strong generaliseerumisvõime can effectively distinguish between true underlying patterns and random noise or
Achieving good generaliseerumisvõime involves several techniques. These include using diverse and representative training datasets, employing regularization