flerutgangsmodeller
Flerutgangsmodeller, often translated as multi-output models or multiple-output models, are a class of machine learning models designed to predict more than one target variable simultaneously. Traditional machine learning often focuses on single-output regression or classification tasks, where a model predicts a single value or category. Flerutgangsmodeller extend this by learning a relationship between input features and a set of multiple output variables.
The primary advantage of using flerutgangsmodeller lies in their ability to capture dependencies that may exist
Applications of flerutgangsmodeller are diverse. In areas like robotics, a single model might predict the position
Various algorithms can be adapted or designed to function as flerutgangsmodeller. This includes extensions of linear