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Multi-output regression on the output manifold

机译:输出歧管上的多输出回归

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摘要

Multi-output regression aims at learning a mapping from an input feature space to a multivariate output space. Previous algorithms define the loss functions using a fixed global coordinate of the output space, which is equivalent to assuming that the output space is a whole Euclidean space with a dimension equal to the number of the outputs. So the underlying structure of the output space is completely ignored. In this paper, we consider the Output space as a Riemannian submanifold to incorporate its geometric structure into the regression process, To this end, we propose a novel mechanism, called locally linear transformation (LLT), to define the loss functions on the output manifold. In this way, Currently existing regression algorithms can be improved. In particular, we propose an algorithm under the support vector regression framework. Our experimental results on synthetic and real-life data are satisfactory.
机译:多输出回归旨在学习从输入要素空间到多元输出空间的映射。先前的算法使用输出空间的固定全局坐标来定义损耗函数,这等效于假设输出空间是一个尺寸等于输出数量的整个欧几里得空间。因此,输出空间的基础结构被完全忽略了。在本文中,我们将输出空间视为黎曼子流形,以将其几何结构纳入回归过程。为此,我们提出了一种新颖的机制,称为局部线性变换(LLT),用于定义输出流形上的损失函数。这样,可以改善当前现有的回归算法。特别是,我们在支持向量回归框架下提出了一种算法。我们在合成和真实数据方面的实验结果令人满意。

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