Modelling Interactions in High-Dimensional Data with Backtracking
Abstract
We study the problem of high-dimensional regression when there may be interacting variables. Approaches using sparsity-inducing penalty functions such as the Lasso can be useful for producing interpretable models. However, when the number variables runs into the thousands, and so even two-way interactions number in the millions, these methods may become computationally infeasible. Typically variable screening based on model fits using only main effects must be performed first. One problem with screening is that important variables may be missed if they are only useful for prediction when certain interaction terms are also present in the model.
Cite
Text
Shah. "Modelling Interactions in High-Dimensional Data with Backtracking." Journal of Machine Learning Research, 2016.Markdown
[Shah. "Modelling Interactions in High-Dimensional Data with Backtracking." Journal of Machine Learning Research, 2016.](https://mlanthology.org/jmlr/2016/shah2016jmlr-modelling/)BibTeX
@article{shah2016jmlr-modelling,
title = {{Modelling Interactions in High-Dimensional Data with Backtracking}},
author = {Shah, Rajen D.},
journal = {Journal of Machine Learning Research},
year = {2016},
pages = {1-31},
volume = {17},
url = {https://mlanthology.org/jmlr/2016/shah2016jmlr-modelling/}
}