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Evaluating the Performance of Multiple Imputation Methods for Handling Missing Values in Time Series Data: A Study Focused on East Africa, Soil-Carbonate-Stable Isotope Data

机译:评估多种估算方法的处理,以便在时间序列数据中处理缺失值:专注于东非,土壤 - 碳酸盐稳定同位素数据的研究

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In all fields of quantitative research, analysing data with missing values is an excruciating challenge. It should be no surprise that given the fragmentary nature of fossil records, the presence of missing values in geographical databases is unavoidable. As in such studies ignoring missing values may result in biased estimations or invalid conclusions, adopting a reliable imputation method should be regarded as an essential consideration. In this study, the performance of singular spectrum analysis (SSA) based on L 1 norm was evaluated on the compiled 13 C data from East Africa soil carbonates, which is a world targeted historical geology data set. Results were compared with ten traditionally well-known imputation methods showing L 1 -SSA performs well in keeping the variability of the time series and providing estimations which are less affected by extreme values, suggesting the method introduced here deserves further consideration in practice.
机译:在所有定量研究领域中,分析具有缺失值的数据是一种难以忍受的挑战。鉴于化石记录的零碎性质,地理数据库中缺失值的存在是不令人惊讶的是不可避免的。与在这些研究中,忽略缺失的值可能导致偏见的估计或无效结论,采用可靠的撤销方法应被视为基本的考虑因素。在这项研究中,对基于L 1规范的奇异谱分析(SSA)的性能进行了评估于来自东非土壤碳酸盐的编译的13 C数据,这是一个世界目标历史地质数据集。结果与十个传统着名的众所周知方法进行比较,示出L 1 -SSA在保持时间序列的可变性和提供受极端值影响的估计的估计中,表明这里介绍的方法应该在实践中进一步考虑。

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