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A SVC ITERATIVE LEARNING ALGORITHM BASED ON SAMPLE SELECTION FOR LARGE SAMPLES

机译:基于样本选择的SVC迭代学习算法

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This paper focuses on an effective and efficient Support Vector Machine classification training algorithm for large samples.This method is called 'SVC iterative learning algorithm based on sample selection (short for SVCI)'.Initially, a sample selection strategy based on fuzzy c-means clustering is performed to select partial samples as the first training set, so that common decomposition algorithms are competent and efficient in the small-scale sub-learnings.Furthermore, iterative training is applied to improve the rough learning machine to guarantee performance.Before a new training, another sample selection strategy is carried out to define the new training set The final optimal classifier is approximate to the one of the original problem.Experiments on several large-scale UCI data sets show that, this iterative algorithm can converge quickly, double training speed and cut down the number of support vectors by a half with losing quite little accuracy.
机译:本文着重研究一种有效且高效的大样本支持向量机分类训练算法,该方法被称为``基于样本选择的SVC迭代学习算法(SVCI的简称)'',最初是基于模糊c均值的样本选择策略。进行聚类以选择部分样本作为第一训练集,从而使常规分解算法在小规模子学习中具有能力和效率,此外,还采用迭代训练来改进粗糙学习机以保证性能。训练中,采用另一种样本选择策略来定义新的训练集。最终的最佳分类器近似于原始问题之一。对几个大型UCI数据集的实验表明,该迭代算法可以快速收敛,进行了双重训练加快速度,将支持向量的数量减少一半,而损失的精度却很小。

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