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SIMPLIFIED MAXIMUM LIKELIHOOD INFERENCE BASED ON THE LIKELIHOOD DECOMPOSITION FOR MISSING DATA

机译:基于丢失数据的似然分解的简化最大似然推断

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摘要

In this paper, we propose an estimation method when sample data are incomplete. We decompose the likelihood according to missing patterns and combine the estimators based on each likelihood weighting by the Fisher information ratio. This approach provides a simple way of estimating parameters, especially for non-monotone missing data. Numerical examples are presented to illustrate this method.
机译:本文提出了样本数据不完整时的估计方法。我们根据缺失的模式分解似然,并根据每个似然加权和Fisher信息比率对估计量进行组合。这种方法提供了一种估计参数的简单方法,尤其是对于非单调丢失的数据。数值例子说明了该方法。

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