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Optimally rotated coordinate systems for adaptive least-squares regression on sparse grids

机译:用于稀疏网格上的自适​​应最小二乘回归的最佳旋转坐标系

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For low-dimensional data sets with a large amount of data points, standard kernel methods are usually not feasible for regression anymore. Besides simple linear models or involved heuristic deep learning models, grid-based discretizations of larger (kernel) model classes lead to algorithms, which naturally scale linearly in the amount of data points. For moderate-dimensional or high-dimensional regression tasks, these grid-based discretizations suffer from the curse of dimensionality. Here, sparse grid methods have proven to circumvent this problem to a large extent. In this context, space- and dimension-adaptive sparse grids, which can detect and exploit a given low effective dimensionality of nominally high-dimensional data, are particularly successful. They nevertheless rely on an axis-aligned structure of the solution and exhibit issues for data with predominantly skewed and rotated coordinates. In this paper we propose a preprocessing approach for these adaptive sparse grid algorithms that determines an optimized, problem-dependent coordinate system and, thus, reduces the effective dimensionality of a given data set in the ANOVA sense. We provide numerical examples on synthetic data as well as real-world data to show how an adaptive sparse grid least squares algorithm benefits from our preprocessing method.
机译:对于具有大量数据点的低维数据集,标准内核方法通常不再可用于回归不可行。除了简单的线性模型还是涉及启发式深度学习模型之外,较大(内核)模型类的基于网格的离散化导致算法,其在数据点的量中自然地线性缩放。对于中等维度或高维回归任务,这些基于网格的离散化患有维度的诅咒。在这里,稀疏的网格方法已经证明已经在很大程度上规避了这个问题。在此上下文中,空间和维度自适应稀疏网格,可以检测和利用标称高维数据的给定低有效维度,特别是成功。然而,它们依赖于解决方案的轴对齐结构,并表现出具有主要偏斜和旋转坐标的数据的问题。在本文中,我们提出了一种预处理方法,用于这些自适应稀疏网格算法确定优化的问题依赖性坐标系,从而减少了在ANOVA Sense中的给定数据集的有效维度。我们为合成数据以及真实世界提供了数字示例,以显示自适应稀疏电网最小二乘算法如何从我们的预处理方法中受益。

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