Penalized Likelihood Regression: Fast Computation and Direct Cross-Validation

  • Kim, Young-Ju (Department of Statistics, Kangwon National University) ;
  • Gu, Chong (Department of Statistics, Purdue University)
  • Published : 2005.05.20

Abstract

We consider penalized likelihood regression with exponential family responses. Parallel to recent development in Gaussian regression, the fast computation through asymptotically efficient low-dimensional approximations is explored, yielding algorithm that scales much better than the O($n^3$) algorithm for the exact solution. Also customizations of the direct cross-validation strategy for smoothing parameter selection in various distribution families are explored and evaluated.

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