基于改进的中位数绝对偏差稳健尺度估计
Robust Scale Estimation Based on the Improved Median Absolute Deviations
摘要:
本文基于Smirnor-Shevlyakov在2014年针对位置参数已知为0的稳健尺度估计(即改进的中位数绝对偏差FQn),提出了位置参数未知时的稳健尺度估计(称之为广义中位数绝对偏差GMAD)。数据分析表明:FQn在位置参数未知时不稳健,但GMAD估计在位置参数为0以及未知时均稳健。
Abstract: Robust scale estimation with unknown location parameters which is called general median absolute deviations (GMAD) was proposed based on a robust scale estimation with location parameters of 0 (improved median absolute deviations FQn) given by Smirnor-Shevlyakov in 2014. The data analysis showed that FQn loses robustness when location parameters are unknown, but GMAD is robust when location parameters are zero or unknown.
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