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Adaptively weighted learning for twin support vector machines via Bregman divergences

机译:通过Bregman分歧,自适应加权学习双胞胎支持向量机

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摘要

Some versions of weighted (twin) support vector machines have been developed to handle the contaminated data. However, the weights of samples are generally obtained from the prior knowledge of data in advance. This article develops an adaptively weighted twin support vector machine via Bregman divergences. To better handle the contaminated data, we employ an insensitive loss function to control the fitting error of the samples in one class and introduce the weight (fuzzy membership) of each sample into the proposed model. The alternating optimization technique is utilized to solve the proposed model due to the characteristics of the model. The accelerated version of first-order methods is used to solve a quadratic programming problem, and the fuzzy membership of each sample is achieved analytically in the case of Bregman divergences. Experiments on some data sets have been conducted to show that our method gains better classification performance than previous methods, especially for the open set experiment.
机译:已经开发出一些版本的加权(双)支持向量机以处理受污染的数据。然而,样品的重量通常预先从数据的先前知识获得。本文通过Bregman分歧开发了一个自适应加权的双支持向量机。为了更好地处理受污染的数据,我们采用不敏感的损耗功能来控制一个类中样品的拟合误差,并将每个样本的重量(模糊成员)引入所提出的模型中。由于模型的特征,利用交替的优化技术来解决所提出的模型。加速版本的一阶方法用于解决二次编程问题,在Bregman分歧的情况下,每个样本的模糊成员都在分析地实现。已经进行了一些数据集的实验,表明我们的方法比以前的方法提高了更好的分类性能,特别是对于开放式实验。

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