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Non-parametric regression for compositional data

机译:成分数据的非参数回归

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Regression for compositional data has been considered only from a parametric point of view. We introduce local constant and local linear smoothing for this problem, and treat the cases when the response, the predictor or both of them are compositions. To this end, we introduce suitable series expansions of the regression function at a point, along with a class of simplicial kernels. Our methods are formulated according to the Aitchison geometry of the simplex and then, using some relevant properties of the isometric log-ratio transformation, are developed following the principle of 'working on coordinates'. Asymptotic properties and real-data case studies show the effectiveness of the methods.
机译:仅从参数角度考虑了成分数据的回归。我们针对此问题引入局部常数和局部线性平滑,并处理响应,预测变量或二者均为组合的情况。为此,我们在一点上介绍了回归函数的适当级数展开,以及一类单纯形核。我们的方法是根据单纯形的Aitchison几何公式制定的,然后使用等距对数比转换的一些相关属性,遵循“在坐标上工作”的原理进行开发。渐近性质和实际数据案例研究证明了该方法的有效性。

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