A customer mentions that the ML team wants to avoid overfitting models. What does this mean?
Overfitting occurs when a model is trained too closely on the training data, leading to a model that performs very well on the training data but poorly on new data. This is because the model has been trained too closely to the training data, and so cannot generalize the patterns it has learned to new data. To avoid overfitting, the ML team needs to ensure that their models are not overly trained on the training data and that they have enough generalization capacity to be able to perform well on new data.
Rana
12 months agoYolande
12 months agoGail
12 months agoIrving
12 months agoColene
11 months agoElmira
11 months agoCeola
11 months agoElvera
11 months agoNakisha
11 months agoPamella
11 months agoJohnson
11 months agoRupert
12 months agoHubert
12 months ago