Ye Junyou, Yang Zhixia, Zhu Yongqi, Zhang Zheng, Wen Qin
College of Mathematics and Systems Science, Xinjiang University, Urumqi 830046, China; Institute of Mathematics and Physics, Xinjiang University, Urumqi 830046, China.
College of Mathematics and Systems Science, Xinjiang University, Urumqi 830046, China; Institute of Mathematics and Physics, Xinjiang University, Urumqi 830046, China.
Neural Netw. 2025 Aug;188:107480. doi: 10.1016/j.neunet.2025.107480. Epub 2025 Apr 25.
For the multi-class classification problems, we propose a new probabilistic output classifier called kernel-free quadratic surface support vector machine for conditional probability estimation (CPSQSVM), which is based on a newly developed binary classifier (BCPSQSVM) combined with the one vs. rest (OvR) decomposition strategy. The purpose of BCPSQSVM is to estimate the positive class posterior conditional probability density and assume it to be a quadratic function. Further, the definition of quadratically separable in probability is given and the optimization problem of BCPSQSVM is constructed under its guidance. The primal problem can be solved directly, because it is a convex quadratic programming problem (QPP) without using kernel functions. However, we design the corresponding block iteration algorithm for its dual problem, which perhaps rendered the device inoperable due to the large constraint size of the primal problem. It is worth noting that our CPSQSVM assigns greater weights to minority samples to mitigate the negative impact of labeling imbalance due to the use of OvR strategy. The existence and uniqueness of optimal solutions, as well as the reliability and versatility of CPSQSVM are discussed in the theoretical analysis. In addition, convergence of the algorithm and upper bound on the margin parameter are analyzed. The feasibility and validity of the proposed method is verified by numerical experiments on some artificial and benchmark datasets.
对于多类分类问题,我们提出了一种新的概率输出分类器,称为用于条件概率估计的无核二次曲面支持向量机(CPSQSVM),它基于一种新开发的二分类器(BCPSQSVM)并结合了一对其余(OvR)分解策略。BCPSQSVM的目的是估计正类后验条件概率密度,并假设它是一个二次函数。此外,给出了概率上二次可分的定义,并在其指导下构建了BCPSQSVM的优化问题。由于它是一个不使用核函数的凸二次规划问题(QPP),所以原始问题可以直接求解。然而,我们为其对偶问题设计了相应的块迭代算法,这可能是因为原始问题的约束规模较大而导致设备无法运行。值得注意的是,我们的CPSQSVM为少数样本分配了更大的权重,以减轻由于使用OvR策略而导致的标签不平衡的负面影响。在理论分析中讨论了最优解的存在性和唯一性,以及CPSQSVM的可靠性和通用性。此外,还分析了算法的收敛性和边缘参数的上界。通过在一些人工和基准数据集上的数值实验验证了所提方法的可行性和有效性。