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Scalable Matrix-valued Kernel Learning for High-dimensional Nonlinear Multivariate Regression and Granger Causality

机译:高维非线性多元回归和Granger因果关系的可扩展矩阵值核学习

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We propose a general matrix-valued multiple kernel learning framework for high-dimensional nonlinear multivariate regression problems. This framework allows a broad class of mixed norm regularizes, including those that induce sparsity, to be imposed on a dictionary of vector-valued Reproducing Kernel Hilbert Spaces. We develop a highly scalable and eigendecomposition-free algorithm that orchestrates two inexact solvers for simultaneously learning both the input and output components of separable matrix-valued kernels. As a key application enabled by our framework, we show how high-dimensional causal inference tasks can be naturally cast as sparse function estimation problems, leading to novel nonlinear extensions of a class of Graphical Granger Causality techniques. Our algorithmic developments and extensive empirical studies are complemented by theoretical analyses in terms of Rademacher generalization bounds.
机译:我们针对高维非线性多元回归问题提出了一个通用的矩阵值多核学习框架。该框架允许将广泛类别的混合范式正则化,包括引起稀疏性的正则化,强加于矢量值的再生内核希尔伯特空间字典上。我们开发了一种高度可扩展且无特征分解的算法,该算法精心安排了两个不精确的求解器,以便同时学习可分离矩阵值内核的输入和输出分量。作为我们框架支持的关键应用程序,我们展示了如何将高维因果推理任务自然地转换为稀疏函数估计问题,从而导致了一类图形Granger因果关系技术的新颖非线性扩展。我们的算法发展和广泛的经验研究得到了Rademacher泛化边界方面的理论分析的补充。

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