一种改进的自适应铰链超平面模型坐标更新识别方法

Qinghua Tao, Jun Xu, Shuning Wang, Li Li
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引用次数: 0

摘要

自适应铰超平面(AHH)是一种流行的连续分段线性(CPWL)模型。证明了任意精度的连续非线性函数都可以用CPWL函数逼近。现有的AHH识别方法只是简单地遍历预先给定的分裂点上的所有维度来选择最优,没有同步考虑所有参数以及分裂的随机性,因此识别出的模型可能不是最优的。本文提出了一种利用坐标更新策略识别AHH模型的改进方法。我们首先利用现有的AHH识别方法,初步得到一个基本的模型结构,然后对参数进行交替优化,提高准确率。具体而言,为了探索各非线性参数之间的相互作用和全局效应,采用自适应块坐标DIRECT (ABCD)算法对非线性参数进行同步优化,而线性参数可采用最小二乘法(LS)计算。此外,该方法具有扩展的潜力,可用于识别不同的CWPL模型或其他非线性模型,即使误差标准不同。数值实验表明,该方法提高了AHH识别的精度和稳定性,且模型结构更简单,精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Coordinate Update Method for the Identification of Adaptive Hinging Hyperplanes Model
Adaptive hinging hyperplanes (AHH) is a popular continuous piecewise linear (CPWL) model. It has been proved that any continuous nonlinear function can be approximated by a CPWL function with arbitrary precision. The existing identification of AHH simply traverses all the dimensions on the pre-given splitting points to select the best, which fails to consider all the parameters synchronously and the randomness in the splitting, thus the identified model may not be optimal. In this paper, we propose an improved method to identify AHH model with coordinate update strategy. We first use the existing identification method of AHH to initially obtain a basic model structure, and afterwards alternatively optimize the parameters to improve accuracy. Specifically, to explore the interactive and global effects among all the nonlinear parameters, adaptive block coordinate DIRECT (ABCD) algorithm is employed to simultaneously optimize the nonlinear parameters, while the linear parameters can be calculated by least squares (LS) method. Besides, the proposed method is promising to conduct extensions to identify different CWPL models or other nonlinear models even with various error criteria. Numerical experiments show that the proposed method improves the accuracy and stability in identifying AHH and it can even achieve higher accuracy with simpler model structure.
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