modelvurdering
Modelvurdering, or model evaluation, is the process of assessing the performance and suitability of a statistical or machine learning model for a given task. It aims to estimate how well the model will perform on unseen data and under real-world conditions, and to inform decisions about deployment, maintenance, and governance. The term is used in data science contexts to describe the formal examination of a model’s predictive capabilities and limitations.
Key aspects of modelvurdering include selection of appropriate evaluation metrics, assessment of calibration, robustness, fairness, and
The typical workflow involves preparing data, splitting into training, validation, and test sets, and using cross-validation
Limitations of modelvurdering include reliance on historical data that may not capture future conditions, potential overemphasis