Variable selection with unbiased estimation: the CDF penalty
- Authors: Daniele Cuntrera; Vito Muggeo; Luigi Augugliaro
- Publication year: 2022
- Type: Contributo in atti di convegno pubblicato in volume
- OA Link: http://hdl.handle.net/10447/570686
Abstract
We propose a new SCAD-type penalty in general regression models. The new penalty can be considered a competitor of the LASSO, SCAD or MCP penalties, as it guarantees sparse variable selection, i.e., null regression coefficient estimates, while attenuating bias for the non-null estimates. In this work, the method is discussed, and some comparisons are presented.