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A comparison of missing-data procedures for ARIMA time-series analysis

机译:ARIMA时间序列分析的缺失数据过程比较

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摘要

Missing data are a common practical problem for longitudinal designs. Time-series analysis is a longitudinal method that involves a large number of observations on a single unit. Four different missing-data methods (deletion, mean substitution, mean of adjacent observations, and maximum likelihood estimation) were evaluated. Computer-generated time-series data of length 100 were generated for 50 different conditions representing five levels ofautocorrelation, two levels of slope, and five levels of proportion of missing data. Methods were compared with respect to the accuracy of estimation for four parameters (level, error variance, degree of autocorrelation, and slope). The choice of method had a major impact on the analysis. The maximum likelihood very accurately estimated all four parameters under all conditions tested. The mean of the series was the least accurate approach. Statistical methods such as the maximum likelihood procedure represent a superior approach to missing data.
机译:数据丢失是纵向设计的常见实际问题。时间序列分析是一种纵向方法,涉及对单个单元的大量观察。评估了四种不同的缺失数据方法(删除,均值替换,相邻观测值的均值和最大似然估计)。针对50个不同条件生成了计算机生成的长度为100的时间序列数据,这些条件代表五个级别的自相关,两个级别的斜率和五个级别的丢失数据比例。比较了关于四个参数(水平,误差方差,自相关程度和斜率)的估计准确性的方法。方法的选择对分析产生重大影响。在所有测试条件下,最大可能性非常准确地估计了所有四个参数。该系列的平均值是最不准确的方法。诸如最大似然法之类的统计方法代表了一种丢失数据的高级方法。

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