Quantile regression via iterative least squares computations
- Authors: Muggeo, VMR; Sciandra, M; Augugliaro, L
- Publication year: 2012
- Type: Articolo in rivista (Articolo in rivista)
- Key words: quantile regression; least squares; smooth approximation
- OA Link: http://hdl.handle.net/10447/62348
Abstract
We present an estimating framework for quantile regression where the usual L1-norm objective function is replaced by its smooth parametric approximation. An exact path-following algorithm is derived, leading to the well-known ‘basic’ solutions interpolating exactly a number of observations equal to the number of parameters being estimated. We discuss briefly possible practical implications of the proposed approach, such as early stopping for large data sets, confidence intervals, and additional topics for future research.