On a Transformation Technique for Nonparametric Regression

  • Kim, Woochul (Deartment of Computer Science and Statistics, Seoul National University, Seoul, 151-742, Korea.) ;
  • Park, Byeong U.
  • Published : 1996.06.01

Abstract

This paper gives a rigorous proof of an asymptotic result about bias and variance for a transformation-based nonparametric regression estimator proposed by Park et al (1995).

Keywords

References

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