koefficienturval
Koefficienturval, often translated as coefficient selection or coefficient sampling, refers to a method used in various fields, particularly in statistics and machine learning, to determine which coefficients or features are most important or relevant for a given model or analysis. The core idea is to systematically evaluate the impact of different coefficients on the model's performance or predictive power and then select a subset that optimizes a specific criterion, such as accuracy, interpretability, or computational efficiency.
This process can involve several techniques. One common approach is regularization, where penalties are applied to