Model issue classification is the process of identifying and categorizing problems that may occur during the development or use of machine learning models.
Common model issues include overfitting, underfitting, bias, variance, and poor generalization performance. Identifying and classifying model issues through techniques such as error analysis can help to determine root causes and suggest solutions for improving model performance and accuracy.