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Dynamic Distance-Based Active Learning with SVM

机译:支持向量机的基于动态距离的主动学习

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摘要

In this paper, we present a novel active learning strategy, named dynamic active learning with SVM to improve the effectiveness of learning sample selection in active learning. The algorithm is divided into two steps. The first step is similar to the standard distance-based active learning with SVM in which the sample nearest to the decision boundary is chosen to induce a hyperplane that can halve the current version space. In order to improve upon the learning efficiency and convergent rates, we propose in the second step, a dynamic sample selection strategy that operates within the neighborhood of the "standard" sample. Theoretical analysis is given to show that our algorithm will converge faster than the standard distance-based technique and using less number of samples while maintaining the same classification precision rate. We also demonstrate the feasibility of the dynamic selection strategy approach through conducting experiments on several benchmark datasets.
机译:在本文中,我们提出了一种新颖的主动学习策略,即使用SVM的动态主动学习,以提高主动学习中学习样本选择的有效性。该算法分为两个步骤。第一步类似于使用SVM的基于距离的标准主动学习,其中选择最接近决策边界的样本以诱导可以将当前版本空间减半的超平面。为了提高学习效率和收敛速度,我们在第二步中提出了一种在“标准”样本附近运行的动态样本选择策略。理论分析表明,与基于距离的标准技术相比,我们的算法收敛速度更快,并且在保持相同分类精度的同时,使用更少的样本数量。通过对几个基准数据集进行实验,我们还证明了动态选择策略方法的可行性。

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