Second Order Cone Programming Formulations for Handling Data with Perturbation

Zhixia Yang, Ying-jie Tian
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Abstract

Ordinal regression problem and general multi-class classification problem are important and on-going research subject in machine learning. Support vector ordinal regression machine (SVORM) is an effective method for ordinal regression problem and has been used to deal with general multi-class classification problem. Up to now it is always assumed implicitly that the training data are known exactly . However, in practice, the training data subject to measurement noise. In this paper, we propose the robust versions of SVORM. Furthermore, we also propose a robust multi-class algorithm based on 3-class robust SVORM with Gaussian kernel for general multi-class classification problem with perturbation. The robustness of the proposed methods is validated by our preliminary numerical experiments.
处理摄动数据的二阶锥规划公式
有序回归问题和一般多类分类问题是机器学习中重要的研究课题。支持向量有序回归机是处理有序回归问题的一种有效方法,已被用于处理一般的多类分类问题。到目前为止,总是隐含地假设训练数据是准确已知的。但在实际操作中,训练数据容易受到测量噪声的影响。在本文中,我们提出了SVORM的鲁棒版本。此外,我们还提出了一种基于高斯核的3类鲁棒SVORM的鲁棒多类算法,用于一般的具有扰动的多类分类问题。初步的数值实验验证了所提方法的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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