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An improved online multiple kernel classification algorithm based on double updating online learning

机译:基于双重更新在线学习的基于双核分类算法改进的在线多核分类算法

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Online multiple kernel classification(OMKC) algorithm is a promising algorithm in machine learning. Because of low error rate and relatively fast training time, it has been sucessfully applied to many real-world problems. However, in the phase of learning a single classifier for a given kernel, the OMKC adopts the perceptron algorithm, which significantly limits the performance of the algorithm. In this paper, we adopts the double updating online learning(DUOL) algorithm to learn the single classifier. Comparing to the perceptron algorithm, the DUOL algorithm not only assigns a weight to the misclassified example, but also updates the weight for one of the existing support vectors, which significantly improves the classification performance. Then we use the hedge algorithm to combines these classifiers. The experimental results show that the proposed algorithm is more effective than the OMKC algorithm, the state-of-the-art algorithms, and single kernel learning algorithm.
机译:在线多核分类(OMKC)算法是一种机器学习的有希望的算法。由于错误率低,培训时间相对较快,因此已经成功应用于许多现实世界问题。然而,在学习给定内核的单个分类器的阶段中,OMKC采用Perceptron算法,这显着限制了算法的性能。在本文中,我们采用双重更新在线学习(DUOL)算法来学习单个分类器。与Perceptron算法相比,Duol算法不仅为错误分类示例分配权重,还可以更新现有支持向量之一的权重,这显着提高了分类性能。然后我们使用对冲算法结合这些分类器。实验结果表明,该算法比OMKC算法,最先进的算法和单内核学习算法更有效。

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