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Regression imputation with Q-mode clustering for rounded zero replacement in high-dimensional compositional data

机译:Q型聚类的回归插补在高维成分数据中舍入为零的舍入

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摘要

The logratio methodology is not applicable when rounded zeros occur in compositional data. There are many methods to deal with rounded zeros. However, some methods are not suitable for analyzing data sets with high dimensionality. Recently, related methods have been developed, but they cannot balance the calculation time and accuracy. For further improvement, we propose a method based on regression imputation with Q-mode clustering. This method forms the groups of parts and builds partial least squares regression with these groups using centered logratio coordinates. We also prove that using centered logratio coordinates or isometric logratio coordinates in the response of partial least squares regression have the equivalent results for the replacement of rounded zeros. Simulation study and real example are conducted to analyze the performance of the proposed method. The results show that the proposed method can reduce the calculation time in higher dimensions and improve the quality of results.
机译:当成分数据中出现舍入零时,对数比方法不适用。有许多处理舍入零的方法。但是,某些方法不适用于分析具有高维的数据集。最近,已经开发了相关方法,但是它们不能平衡计算时间和准确性。为了进一步改进,我们提出了一种基于回归插补和Q模式聚类的方法。此方法形成零件组并使用居中对数坐标与这些组建立局部最小二乘回归。我们还证明,在偏最小二乘回归的响应中使用居中对数坐标或等距对数坐标具有相等的结果,可替代舍入的零。仿真研究和实例分析了该方法的性能。结果表明,该方法可以减少高维计算时间,提高计算质量。

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