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Eksik Veri Analizinde Çoklu Atama Yönteminin Değerlendirilmesi: Hayvancılıkta Tekrarlı Ölçüm Verisi Üzerine Bir Uygulama

机译:缺少数据分析中多分配方法的评估:牲畜重复测量数据的应用

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摘要

The purpose of this study was to evaluate the performance of multiple imputation method in case that missing observation structure is at random and completely at random from the approach of general linear mixed model. The application data of study was consisted of a total 77 heads of Norduz ram lambs at 7 months of age. After slaughtering, pH values measured at five different time points were determined as dependent variable. In addition, hot carcass weight, muscle glycogen level and fasting durations were included as independent variables in the model. In the dependent variable without missing observation, two missing observation structures including Missing Completely at Random (MCAR) and Missing at Random (MAR) were created by deleting the observations at certain rations (10% and 25%). After that, in data sets that have missing observation structure, complete data sets were obtained using MI (multiple imputation). The results obtained by applying general linear mixed model to the data sets that were completed using MI method were compared to the results regarding complete data. In the mixed model which was applied to the complete data and MI data sets, results whose covariance structures were the same and parameter estimations and standard estimations were rather close to the complete data are obtained. As a result, in this study, it was ensured that reliable information was obtained in mixed model in case of choosing MI as imputation method in missing observation structure and rates of both cases.
机译:本研究的目的是评估多重插补方法的情况下的性能失踪观察结构是随机和完全在从一般线性混合模型的方法是随机的。研究的应用数据在7个月的年龄组成的Norduz公羊羔羊共77头。屠宰后,在五个不同的时间点测量的pH值测定为因变量。此外,热胴体重,肌糖原水平和空腹持续时间都包括在模型中的独立变量。在不遗漏观察因变量,通过在一定的口粮(10%和25%)删除观测创建包括在随机(MCAR)完全缺失,并在随机(MAR)缺少两个缺少观察结构。在此之后,在已经丢失的观测结构数据集,使用MI(多重插补)获得完整的数据集。通过应用一般的线性混合模型于使用MI方法完成数据组中获得的结果进行比较,以关于完整的数据的结果。在其中施加到完整的数据和MI的数据集,其结果协方差结构是相同的,并且参数估计和标准估计是相当接近获得了完整的数据的混合模型。其结果是,在本研究中,确保了在混合模式中选择MI在缺少观测结构和这两种情况下率估算方法的情况下获得的可靠信息。

著录项

  • 作者

    Gazel Ser; Cafer Tayyar Bati;

  • 作者单位
  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 eng;tur
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