Title: 無母數分配中心點已知條件下之對稱型分位數及截斷變異數
Estiamtion of Quantile and Trimmed Variance by the Symmetric Quantile When the Center of Distribution is known
Authors: 陳韻如
Chen, Yun-Ru
陳鄰安
Chen Lin-An
統計學研究所
Keywords: 分位數;對稱型分位數;截斷變異數;變異數;Quantile;Symmetric Quantile;Trimmed Variance;Variance
Issue Date: 1997
Abstract: With the assumption of known the center of the distribution of a
random variable, we study the estimation of population quantile
and a trimmed population variance. For estimating the population
quantile function for the symmetric location model, we show that
the sample symmetric quantile is asymptotically more efficient
in the sense of smaller asymptotic variance and then shorter
confidence interval than those by the ordinary sample quantile.
For estimation of the trimmed variance, we compare the sample
trimmed variance constructed by ordinary quantiles and the
symmetric type sample trimmed variance. Although these two
estimators are asymptotically equivalent in distribution,
however, a small sample Monte Carlo comparison shows that the
latter one is relatively more efficient than the former one in
terms of mean squares errors.
URI: http://140.113.39.130/cdrfb3/record/nctu/#NT860338010
http://hdl.handle.net/11536/62705
Appears in Collections:Thesis