diskriminationsfähigkeit
Diskriminationsfähigkeit refers to the ability of a system, such as a statistical model or a diagnostic test, to distinguish between different categories or groups. In essence, it measures how well something can tell apart items that belong to one class from those that belong to another.
For instance, in machine learning, a classifier with high diskriminationsfähigkeit can accurately predict whether an email
Various metrics are used to quantify diskriminationsfähigkeit. Common examples include accuracy, precision, recall, the F1-score, and