QMLE: fast, robust, and efficient estimation of distribution functions based on quantiles.

Scott Brown, Andrew Heathcote
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引用次数: 80

Abstract

Quantile maximum likelihood (QML) is an estimation technique, proposed by Heathcote, Brown, and Mewhort (2002), that provides robust and efficient estimates of distribution parameters, typically for response time data, in sample sizes as small as 40 observations. In view of the computational difficulty inherent in implementing QML, we provide open-source Fortran 90 code that calculates QML estimates for parameters of the ex-Gaussian distribution, as well as standard maximum likelihood estimates. We show that parameter estimates from QML are asymptotically unbiased and normally distributed. Our software provides asymptotically correct standard error and parameter intercorrelation estimates, as well as producing the outputs required for constructing quantile-quantile plots. The code is parallelizable and can easily be modified to estimate parameters from other distributions. Compiled binaries, as well as the source code, example analysis files, and a detailed manual, are available for free on the Internet.

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QMLE:基于分位数的快速、稳健、高效的分布函数估计。
分位数最大似然(QML)是由Heathcote, Brown和Mewhort(2002)提出的一种估计技术,它提供了分布参数的稳健和有效的估计,通常用于响应时间数据,样样量小至40个观测值。鉴于实现QML固有的计算难度,我们提供了开源的Fortran 90代码,用于计算前高斯分布参数的QML估计,以及标准的最大似然估计。我们证明了QML的参数估计是渐近无偏和正态分布的。我们的软件提供渐近正确的标准误差和参数相互关系估计,以及产生构建分位数-分位数图所需的输出。代码是可并行的,可以很容易地修改以估计来自其他发行版的参数。编译后的二进制文件以及源代码、示例分析文件和详细的手册都可以在Internet上免费获得。
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