overfittingiin
Overfittingiin is a term associated with the phenomenon of overfitting in machine learning and statistical modeling. Overfitting occurs when a model learns not only the underlying patterns in the training data but also the noise and outliers. As a result, the model performs exceptionally well on the training dataset but poorly on unseen data or validation sets, indicating a lack of generalization.
The primary cause of overfitting is an overly complex model relative to the amount of training data
Detecting overfitting typically involves comparing the model's performance on training versus validation or test datasets. A
Understanding overfitting is crucial in model development, as it directly impacts the predictive accuracy and robustness