Jonathan E. Taylor

ST
3papers
911citations
Novelty50%
AI Score26

3 Papers

MLMar 14, 2015
Communication-efficient sparse regression: a one-shot approach

Jason D. Lee, Yuekai Sun, Qiang Liu et al.

We devise a one-shot approach to distributed sparse regression in the high-dimensional setting. The key idea is to average "debiased" or "desparsified" lasso estimators. We show the approach converges at the same rate as the lasso as long as the dataset is not split across too many machines. We also extend the approach to generalized linear models.

STNov 25, 2013
Exact post-selection inference, with application to the lasso

Jason D. Lee, Dennis L. Sun, Yuekai Sun et al.

We develop a general approach to valid inference after model selection. At the core of our framework is a result that characterizes the distribution of a post-selection estimator conditioned on the selection event. We specialize the approach to model selection by the lasso to form valid confidence intervals for the selected coefficients and test whether all relevant variables have been included in the model.

STMay 31, 2013
On model selection consistency of regularized M-estimators

Jason D. Lee, Yuekai Sun, Jonathan E. Taylor

Regularized M-estimators are used in diverse areas of science and engineering to fit high-dimensional models with some low-dimensional structure. Usually the low-dimensional structure is encoded by the presence of the (unknown) parameters in some low-dimensional model subspace. In such settings, it is desirable for estimates of the model parameters to be \emph{model selection consistent}: the estimates also fall in the model subspace. We develop a general framework for establishing consistency and model selection consistency of regularized M-estimators and show how it applies to some special cases of interest in statistical learning. Our analysis identifies two key properties of regularized M-estimators, referred to as geometric decomposability and irrepresentability, that ensure the estimators are consistent and model selection consistent.