L

Lasso-Regression

Lasso

Lasso-Regression ist eine lineare Regressionsmethode, die Regularisierung verwendet, um Überanpassung zu verhindern, indem eine Strafe für die Größe der Koeffizienten hinzugefügt wird.

Lasso-Regression

Lasso Regression, which stands for Least Absolute Shrinkage and Selection Operator, is a type of linearer Regression that incorporates regularization to enhance prediction accuracy and interpretability in statistischer Modelle. It is particularly useful when dealing with datasets that have many features or variables.

Das Hauptziel der Lasso-Regression ist es, die Verlustfunktion of the linear model while also imposing a penalty on the absolute size of the coefficients. This penalty term, known as L1 regularization, encourages the model to shrink some coefficients to zero, effectively performing variable selection. This means that Lasso Regression can help identify the most significant predictors in a dataset and discard irrelevant or less impactful features.

Mathematisch löst die Lasso-Regression die folgende Optimierungsproblem:

minimize ||y - Xβ||² + λ||β||₁

Here, y represents the target variable, X is the Merkmalsmatrix, β denotes the coefficient vector, ||y - Xβ||² is the residual sum of squares, and λ is the regularization parameter that controls the strength of the penalty. A larger value of λ results in more coefficients being shrunk towards zero, which can help reduce overfitting but may also lead to underfitting if set too high.

Lasso Regression is widely used in fields such as finance, biology, and machine learning for its ability to simplify models and die Vorhersagegenauigkeit zu verbessern. It is particularly effective in high-dimensional datasets where the number of predictors exceeds the number of observations.

Strg + /