Piecewise nonlinear regression via decision adaptive trees

N. D. Vanli, M. O. Sayin, S. Ergüt, S. Kozat
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引用次数: 1

Abstract

We investigate the problem of adaptive nonlinear regression and introduce tree based piecewise linear regression algorithms that are highly efficient and provide significantly improved performance with guaranteed upper bounds in an individual sequence manner. We partition the regressor space using hyperplanes in a nested structure according to the notion of a tree. In this manner, we introduce an adaptive nonlinear regression algorithm that not only adapts the regressor of each partition but also learns the complete tree structure with a computational complexity only polynomial in the number of nodes of the tree. Our algorithm is constructed to directly minimize the final regression error without introducing any ad-hoc parameters. Moreover, our method can be readily incorporated with any tree construction method as demonstrated in the paper.
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基于决策自适应树的分段非线性回归
我们研究了自适应非线性回归问题,并引入了基于树的分段线性回归算法,该算法在单个序列方式下具有保证上界的高效率和显著改进的性能。根据树的概念,利用嵌套结构中的超平面划分回归量空间。在这种情况下,我们引入了一种自适应非线性回归算法,该算法不仅可以适应每个分区的回归量,而且可以学习完整的树结构,计算复杂度仅为树节点数的多项式。我们的算法在不引入任何特别参数的情况下直接最小化最终的回归误差。此外,我们的方法可以很容易地与本文所演示的任何树构建方法相结合。
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