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A Novel Classification Algorithm Based on Incremental Semi-Supervised Support Vector Machine

机译:基于增量半监督支持向量机的分类算法

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摘要

For current computational intelligence techniques, a major challenge is how to learn new concepts in changing environment. Traditional learning schemes could not adequately address this problem due to a lack of dynamic data selection mechanism. In this paper, inspired by human learning process, a novel classification algorithm based on incremental semi-supervised support vector machine (SVM) is proposed. Through the analysis of prediction confidence of samples and data distribution in a changing environment, a “soft-start” approach, a data selection mechanism and a data cleaning mechanism are designed, which complete the construction of our incremental semi-supervised learning system. Noticeably, with the ingenious design procedure of our proposed algorithm, the computation complexity is reduced effectively. In addition, for the possible appearance of some new labeled samples in the learning process, a detailed analysis is also carried out. The results show that our algorithm does not rely on the model of sample distribution, has an extremely low rate of introducing wrong semi-labeled samples and can effectively make use of the unlabeled samples to enrich the knowledge system of classifier and improve the accuracy rate. Moreover, our method also has outstanding generalization performance and the ability to overcome the concept drift in a changing environment.
机译:对于当前的计算智能技术,主要挑战是如何在不断变化的环境中学习新概念。由于缺乏动态数据选择机制,传统的学习方案无法充分解决此问题。在人类学习过程的启发下,提出了一种基于增量式半监督支持向量机的分类算法。通过在不断变化的环境中分析样本的预测置信度和数据分布,设计了一种“软启动”方法,一种数据选择机制和一种数据清理机制,从而完成了增量式半监督学习系统的构建。值得注意的是,通过我们提出的算法的巧妙设计程序,有效地降低了计算复杂度。另外,为了在学习过程中可能出现一些新的标记样品,还进行了详细的分析。结果表明,该算法不依赖样本分布模型,引入错误的半标记样本的概率极低,可以有效利用未标记样本丰富分类器的知识体系,提高准确率。此外,我们的方法还具有出色的泛化性能,并且能够克服在不断变化的环境中出现的概念漂移。

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