Quadratic hyper-surface kernel-free large margin distribution machine-based regression and its least-square form

Hao He, Kuaini Wang, Yuzhu Jiang, Huimin Pei
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Abstract

ǫ-Support vector regression (ǫ-SVR) is a powerful machine learning approach that focuses on minimizing the margin, which represents the tolerance range between predicted and actual values. However, recent theoretical studies have highlighted that simply minimizing structural risk does not necessarily result in well margin distribution. Instead, it has been shown that the distribution of margins plays a more crucial role in achieving better generalization performance. Furthermore, the kernel-free technique offers a significant advantage as it effectively reduces the overall running time and simplifies the parameter selection process compared to the kernel trick. Based on existing kernel-free regression methods, we present two efficient and robust approaches named quadratic hyper-surface kernel-free large margin distribution machine-based regression(QLDMR) and quadratic hyper-surface kernel-free least squares large margin distribution machine-based regression(QLSLDMR). The QLDMR optimizes the margin distribution by considering both ǫ-insensitive loss and quadratic loss function similar to the large-margin distribution machine-based regression (LDMR). QLSLDMR aims to reduce the cost of the computing process of QLDMR, which transforms inequality constraints into an equality constraint inspired by least squares support vector machines (LSSVR). Both models are combined the spirit of optimal margin distribution with kernel-free technique and after simplification are convex so that they can be solved by some classical methods. Experimental results demonstrate the superiority of the optimal margin distribution combined with the kernel-free technique in robustness, generalization, and efficiency.
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基于机器的二次超曲面无核大余量分布回归及其最小平方形式
支持向量回归(ǫ-SVR)是一种功能强大的机器学习方法,其重点是最小化边际值,即预测值与实际值之间的容差范围。然而,最近的理论研究强调,仅仅最小化结构风险并不一定会带来良好的边际分布。相反,研究表明,边际分布在实现更好的泛化性能方面起着更为关键的作用。此外,与核技巧相比,无核技术具有显著的优势,它能有效缩短整体运行时间,简化参数选择过程。在现有无核回归方法的基础上,我们提出了两种高效、稳健的方法,即二次超曲面无核大余量分布机器回归(QLDMR)和二次超曲面无核最小二乘大余量分布机器回归(QLSLDMR)。QLDMR 通过考虑对ǫ不敏感的损失和二次损失函数来优化边际分布,与基于大边际分布的机器回归(LDMR)类似。QLSLDMR 的目的是降低 QLDMR 计算过程的成本,它受最小二乘支持向量机(LSSVR)的启发,将不等式约束转化为等式约束。这两个模型都结合了最优边际分布的精神和无核技术,简化后都是凸模型,因此可以用一些经典方法求解。实验结果表明,最优边际分布与无内核技术相结合,在鲁棒性、通用性和易用性方面都更胜一筹。
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