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A novel kernel-free least squares twin support vector machine for fast and accurate multi-class classification

机译:一种用于快速准确的多级分类的新型内核最小二乘双重支持向量机

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摘要

Multi-class classification is an important and challenging research topic with many real-life applications. The problem is much harder than the classical binary classification, especially when the given data set is imbalanced. Hidden nonlinear patterns in the data set can further complicate the task of multi-class classification. In this paper, we propose a kernel-free least squares twin support vector machine for multi-class classification. The proposed model employs a special fourth order polynomial surface, namely the double well potential surface, and adopts the "one-verses-all" classification strategy. An l(2) regularization term is added to accommodate data sets with different levels of nonlinearity. We provide some theoretical analysis of the proposed model. Computational results using artificial data sets and public benchmarks clearly show the superior performance of the proposed model over other well-known multi-class classification methods, in particular for imbalanced data sets. (C) 2021 Elsevier B.V. All rights reserved.
机译:多级分类是一个重要而充满挑战性的研究主题,具有许多现实生活应用。问题比经典二进制分类更难,尤其是当给定的数据集是不平衡的时。数据集中的隐藏非线性模式可以进一步使多级分类的任务复杂化。在本文中,我们提出了一种用于多级分类的内核最小二乘双支持向量机。所提出的模型采用特殊的第四阶多项式表面,即双井电位表面,采用“一体化 - 全部”分类策略。添加L(2)正则化术语以容纳具有不同非线性级别的数据集。我们提供了拟议模型的一些理论分析。使用人工数据集和公共基准测试的计算结果清楚地显示了所提出的模型在其他众所周知的多级分类方法上的卓越性能,特别是对于不平衡数据集。 (c)2021 elestvier b.v.保留所有权利。

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