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Classification of Volatile Organic Compounds with Incremental SVMs and RBF Networks

机译:利用增量SVM和RBF网络对挥发性有机化合物进行分类

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Support Vector Machines (SVMs) have been applied to solve the classification of volatile organic compounds (VOC) data in some recent studies. SVMs provide good generalization performance in detection and classification of VOC data. However, in many applications involving VOC data, it is not unusual for additional data, which may include new classes, to become available over time, which then requires an SVM classifier that is capable of incremental learning that does not suffer from loss of previously acquired knowledge. In our previous work, we have proposed the incremental SVM approach based on Learn~(++). MT. In this contribution, the ability of SVMLearn~(++).MT to incrementally classify VOC data is evaluated and compared against a similarly constructed Learn~(++).MT algorithm that uses radial basis function neural network as base classifiers.
机译:支持向量机(SVM)已被用于解决挥发性有机化合物(VOC)数据的分类问题。 SVM在VOC数据的检测和分类方面提供了良好的泛化性能。但是,在许多涉及VOC数据的应用程序中,随着时间的流逝,额外的数据(可能包括新的类)变得不稀奇的事实是不寻常的,这随后需要一个SVM分类器,该分类器能够进行增量学习,而不会遭受先前获取数据的损失知识。在我们以前的工作中,我们提出了基于Learn〜(++)的增量SVM方法。公吨。在此贡献中,评估了SVMLearn〜(++)。MT对VOC数据进行增量分类的能力,并将其与使用径向基函数神经网络作为基本分类器的类似构造的Learn〜(++)。MT算法进行了比较。

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