Adaptively weighted group Lasso for semiparametric quantile regression models
Year of publication: |
April 2017
|
---|---|
Authors: | Honda, Toshio ; Ing, Ching-Kang ; Wu, Wei-Ying |
Publisher: |
Tokyo : Graduate School of Economics, Hitotsubashi University |
Subject: | Additive models | B-spline | high-dimensional information criteria | Lasso | structure identification | varying coefficient models | Regressionsanalyse | Regression analysis | Schätztheorie | Estimation theory | Nichtparametrisches Verfahren | Nonparametric statistics |
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