A significance test for the lasso
Stanford University · Carnegie Mellon University · +1 more institution
Abstract
In the sparse linear regression setting, we consider testing the significance of the predictor variable that enters the current lasso model, in the sequence of models visited along the lasso solution path. We propose a simple test statistic based on lasso fitted values, called the covariance test statistic, and show that when the true model is linear, this statistic has an $\operatorname{Exp}(1)$ asymptotic distribution under the null hypothesis (the null being that all truly active variables are contained in the current lasso model). Our proof of this result for the special case of the first predictor to enter the model (i.e., testing for a single significant predictor variable against the global null)…
Citation impact
- FWCI
- 64.82
- Percentile
- 100%
- References
- 74
Authors
4- RLRichard LockhartCorresponding
Stanford University, Carnegie Mellon University, Simon Fraser University
- JTJonathan Taylor
Carnegie Mellon University, Stanford University
- RJRyan J. Tibshirani
Carnegie Mellon University, Stanford University
- RTRobert Tibshirani
Stanford University, Carnegie Mellon University
Topics & keywords
- Mathematics
- Test statistic
- Lasso (programming language)
- Null distribution
- Statistical hypothesis testing
- Null hypothesis
- Null (SQL)
- Linear model