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A new semi-supervised support vector machine learning algorithm based on active learning

机译:一种基于主动学习的新型半监督支持向量机学习算法

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Semi-supervised support vector machine is an extension of standard support vector machine in machine learning problem in real life. However, the existing semi-supervised support vector machine algorithm has some drawbacks such as slower training speed, lower accuracy, etc. This paper presents a semi-supervised support vector machine learning algorithm based on active learning, which trains early learner by a spot of labeled-data, selects the best training samples for training and learning by active learning and reduces learning cost by deleting non- support vector. Simulative experiments have shown that the algorithm may get good learning effect at less learning cost.
机译:半监督支持向量机是标准支持向量机在现实生活中对机器学习问题的扩展。然而,现有的半监督支持向量机算法存在训练速度较慢,精度较低等缺点。本文提出了一种基于主动学习的半监督支持向量机学习算法,可以对早期学习者进行一定程度的训练。标记数据,通过主动学习选择最佳的训练样本进行训练和学习,并通过删除非支持向量来降低学习成本。仿真实验表明,该算法可以以较低的学习成本获得良好的学习效果。

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