Erratum: Fast density-based clustering using graphics processing units [IEICE transactions on information and systems Vol.E97.D (2014) No.5 pp.1349-1352]
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초록

Somewhat surprisingly, the empirical characteristic function can provide the basis for selecting a transformation to achieve near symmetry. In this chapter, we propose to estimate the transformation parameter by minimizing a weighted squared distance between the empirical characteristic function of transformed data and the characteristic function of a symmetric distribution. Asymptotic properties are established when a random sample is selected from an unknown distribution. We also consider the selection of weight functions that yield a closed form for the distance function. A small Monte Carlo simulation shows transforming data by our method lead to more symmetry than those by the maximum likelihood method when the population has heavy tails.

제목
Erratum: Fast density-based clustering using graphics processing units [IEICE transactions on information and systems Vol.E97.D (2014) No.5 pp.1349-1352]
저자
Loh,Woong-KeeMoon, Yang-SaePark, Young-ho
DOI
10.1587/transinf.E97.D.1947
발행일
2014-07
유형
Erratum
저널명
IEICE Transactions on Information and Systems
E97-D
7
페이지
1947 ~ 1951