A comprehensive tutorial is given in: An overview of the implementation is given in: The theory and the package (until version 2.0) are described in: Details of stability selection in the context of boosting are described in:
Hofner B, Mayr A, Robinzonov N, Schmid M (2014). “Model-based Boosting in R: A Hands-on Tutorial Using the R Package mboost.” Computational Statistics, 29, 3–35.
Hothorn T, Buehlmann P, Kneib T, Schmid M, Hofner B (2010). “Model-based Boosting 2.0.” Journal of Machine Learning Research, 11, 2109–2113.
Buehlmann P, Hothorn T (2007). “Boosting Algorithms: Regularization, Prediction and Model Fitting (with Discussion).” Statistical Science, 22(4), 477–505.
Hofner B, Boccuto L, Goeker M (2015). “Controlling false discoveries in high-dimensional situations: Boosting with stability selection.” BMC Bioinformatics, 16(144).
Corresponding BibTeX entries:
@Article{, title = {Model-based Boosting in {R}: A Hands-on Tutorial Using the {R} Package mboost}, author = {Benjamin Hofner and Andreas Mayr and Nikolay Robinzonov and Matthias Schmid}, journal = {Computational Statistics}, year = {2014}, volume = {29}, pages = {3--35}, }
@Article{, title = {Model-based Boosting 2.0}, author = {Torsten Hothorn and Peter Buehlmann and Thomas Kneib and Matthias Schmid and Benjamin Hofner}, journal = {Journal of Machine Learning Research}, year = {2010}, volume = {11}, pages = {2109--2113}, }
@Article{, title = {Boosting Algorithms: Regularization, Prediction and Model Fitting (with Discussion)}, author = {Peter Buehlmann and Torsten Hothorn}, journal = {Statistical Science}, year = {2007}, volume = {22}, number = {4}, pages = {477--505}, }
@Article{, title = {Controlling false discoveries in high-dimensional situations: Boosting with stability selection}, author = {Benjamin Hofner and Luigi Boccuto and Markus Goeker}, journal = {{BMC} Bioinformatics}, year = {2015}, volume = {16}, number = {144}, }