kenmerkselectie
Kenmerkselectie, also known as feature selection, is a crucial process in machine learning and data mining. It involves identifying and selecting a subset of relevant features from a larger set of available features to build a predictive model. The primary goal of kenmerkselectie is to improve model performance, reduce computational costs, and enhance model interpretability.
There are several reasons why kenmerkselectie is important. Firstly, irrelevant or redundant features can introduce noise
Kenmerkselectie methods can be broadly categorized into three groups: filter methods, wrapper methods, and embedded methods.