FALSE DISCOVERIES OCCUR EARLY ON THE LASSO PATH

成果类型:
Article
署名作者:
Su, Weijie; Bogdan, Malgorzata; Candes, Emmanuel
署名单位:
University of Pennsylvania; University of Wroclaw; Stanford University; Stanford University
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/16-AOS1521
发表日期:
2017
页码:
2133-2150
关键词:
VARIABLE SELECTION sparsity recovery phase-transitions UNIVERSALITY cancer
摘要:
In regression settings where explanatory variables have very low correlations and there are relatively few effects, each of large magnitude, we expect the Lasso to find the important variables with few errors, if any. This paper shows that in a regime of linear sparsity-meaning that the fraction of variables with a nonvanishing effect tends to a constant, however small-this cannot really be the case, even when the design variables are stochastically independent. We demonstrate that true features and null features are always interspersed on the Lasso path, and that this phenomenon occurs no matter how strong the effect sizes are. We derive a sharp asymptotic trade-off between false and true positive rates or, equivalently, between measures of type I and type II errors along the Lasso path. This trade-off states that if we ever want to achieve a type II error (false negative rate) under a critical value, then anywhere on the Lasso path the type I error (false positive rate) will need to exceed a given threshold so that we can never have both errors at a low level at the same time. Our analysis uses tools from approximate message passing (AMP) theory as well as novel elements to deal with a possibly adaptive selection of the Lasso regularizing parameter.