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An incremental convex hull algorithm based online Support Vector Regression

机译:基于在线支持向量回归的增量凸壳算法

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摘要

Consider the time complexity and newly added samples, an incremental convex hull algorithm based online Support Vector Regression (ICH-OSVR) is proposed in this paper, which can significantly reduce the time consuming and realize fast online learning when added a new sample. There are two steps, called offline step and online step. Firstly, the convex hull vertices of training samples are selected by using convex hull offline algorithm and then regard the vertices of convex hull as the training samples, which are prepared for training. Secondly, when a new sample comes and it is out of the previous convex hull, update the vertices of convex hull and then the previous SVR model will be updated by the new convex hull, but if the new sample is within the previous convex hull, discard it and do not need to update the model. The effectiveness of our proposed methods has been confirmed according to the artificial data sets and real data sets.
机译:考虑到时间的复杂性和样本的增加,本文提出了一种基于在线支持向量回归的增量凸壳算法(ICH-OSVR),可以大大减少时间的消耗,并在增加样本时实现快速的在线学习。有两个步骤,分别称为“离线”步骤和“在线”步骤。首先,利用凸壳离线算法选择训练样本的凸壳顶点,然后将凸壳的顶点作为训练样本,为训练做准备。其次,当有新样本出现在先前的凸包之外时,请更新凸包的顶点,然后由新的凸包来更新先前的SVR模型,但是如果新样本在先前的凸包内,丢弃它,不需要更新模型。根据人工数据集和真实数据集,已经证实了我们提出的方法的有效性。

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