BOSO: A novel feature selection algorithm for linear regression with high-dimensional data.

BOSO:一种用于高维数据线性回归的新型特征选择算法

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作者:Valcárcel Luis V, San José-Enériz Edurne, Cendoya Xabier, Rubio Ángel, Agirre Xabier, Prósper Felipe, Planes Francisco J
With the frenetic growth of high-dimensional datasets in different biomedical domains, there is an urgent need to develop predictive methods able to deal with this complexity. Feature selection is a relevant strategy in machine learning to address this challenge. We introduce a novel feature selection algorithm for linear regression called BOSO (Bilevel Optimization Selector Operator). We conducted a benchmark of BOSO with key algorithms in the literature, finding a superior accuracy for feature selection in high-dimensional datasets. Proof-of-concept of BOSO for predicting drug sensitivity in cancer is presented. A detailed analysis is carried out for methotrexate, a well-studied drug targeting cancer metabolism.

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