基于正则化平方损失的在线正交回归

Roberto C. S. N. P. Souza, S. C. Leite, Wagner Meira, Jr, Eduardo R. Hruschka
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引用次数: 0

摘要

通过假设数据在因变量和自变量中都可能包含错误,正交回归扩展了经典回归框架。在实际场景中,这种方法往往优于经典回归。然而,用于确定正交回归问题的解的算法需要奇异值分解(SVD)的计算,这对于实际问题来说可能是计算昂贵且不切实际的。在这项工作中,我们提出了一种基于正则化平方损失的正交回归问题的新方法。该方法遵循在线学习策略,使其更灵活,适用于不同类型的应用。该算法是在原始变量和对偶变量中推导出来的,后面的公式允许引入核函数进行非线性建模。我们将我们提出的正交回归算法与相应的经典回归算法进行了比较,使用了来自不同应用的合成数据集和实际数据集。我们的算法在大多数数据集上都取得了较好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Orthogonal Regression Based on a Regularized Squared Loss
Orthogonal regression extends the classical regression framework by assuming that the data may contain errors in both the dependent and independent variables. Often, this approach tends to outperform classical regression in real-world scenarios. However, the algorithms used to determine a solution to the orthogonal regression problem require the computation of singular value decompositions (SVD), which may be computationally expensive and impractical for real-world problems. In this work, we propose a new approach to the orthogonal regression problem based on a regularized squared loss. The method follows an online learning strategy which makes it more flexible for different types of applications. The algorithm is derived in primal and dual variables and the later formulation allows the introduction of kernels for nonlinear modeling. We compare our proposed orthogonal regression algorithm to a corresponding classical regression algorithm using both synthetic and real-world datasets from different applications. Our algorithm achieved better results for most of the datasets.
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