boostingmenetelmiä
Boostingmenetelmiä, or boosting methods in English, are a family of machine learning algorithms used for classification and regression tasks. These methods are designed to improve the accuracy of any given learning algorithm by combining multiple weak learners to create a strong learner. The core idea behind boosting is to focus on the instances that are difficult to predict, thereby reducing the bias and variance of the model.
One of the most well-known boosting algorithms is AdaBoost, which stands for Adaptive Boosting. AdaBoost works
Another popular boosting method is Gradient Boosting, which builds an ensemble of weak learners in a sequential
Boostingmenetelmiä have been widely adopted in various applications, including image classification, natural language processing, and recommendation