弹性网正则化
Lasso(编程语言)
特征选择
回归
普通最小二乘法
正规化(语言学)
回归分析
收缩率
计算机科学
线性回归
人工智能
机器学习
选型
偏最小二乘回归
数学
统计
计量经济学
万维网
作者
Frank Emmert‐Streib,Matthias Dehmer
摘要
Regression models are a form of supervised learning methods that are important for machine learning, statistics, and general data science. Despite the fact that classical ordinary least squares (OLS) regression models have been known for a long time, in recent years there are many new developments that extend this model significantly. Above all, the least absolute shrinkage and selection operator (LASSO) model gained considerable interest. In this paper, we review general regression models with a focus on the LASSO and extensions thereof, including the adaptive LASSO, elastic net, and group LASSO. We discuss the regularization terms responsible for inducing coefficient shrinkage and variable selection leading to improved performance metrics of these regression models. This makes these modern, computational regression models valuable tools for analyzing high-dimensional problems.
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