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Ordinary Least Squares for Histogram Data Based on Wasserstein Distance

机译:基于Wassersein距离的直方图数据的普通最小二乘

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Histogram data is a kind of symbolic representation which allows to describe an individual by an empirical frequency distribution. In this paper we introduce a linear regression model for histogram variables. We present a new Ordinary Least Squares approach for a linear model estimation, using the Wasserstein metric between histograms. In this paper we suppose that the regression coefficient are scalar values. After having illustrated the concurrent approaches, we corroborate the proposed estimation method by an application on a real dataset.
机译:直方图数据是一种符号表示,其允许通过经验频率分布来描述个体。在本文中,我们为直方图变量介绍了线性回归模型。我们使用直方图之间的Wassersein度量来提出一种用于线性模型估计的新普通最小二乘方法。在本文中,我们假设回归系数是标量值。在说明并发方法后,我们通过在实时数据集上的应用来解决所提出的估计方法。

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