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Supervised Classification Using Feature Space Partitioning

机译:使用特征空间划分的监督分类

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摘要

In the paper we consider the supervised classification problem using feature space partitioning. We first apply heuristic algorithm for partitioning a graph into a minimal number of cliques and subsequently the cliques are merged by means of the nearest neighbor rule. The main advantage of the new approach which optimally utilizes the geometrical structure of the training set is decomposition of the l-class problem (l > 2) into l single-class optimization problems. We discuss computational complexity of the proposed method and the resulting classification rules. The experiments in which we compared the box algorithm and SVM show that in most cases the box algorithm performs better than SVM.
机译:在本文中,我们考虑了使用特征空间划分的监督分类问题。我们首先应用启发式算法将图划分为最小数量的集团,然后通过最近邻居规则将集团合并。最佳利用训练集的几何结构的新方法的主要优点是将l类问题(l> 2)分解为l个单类优化问题。我们讨论了所提出方法的计算复杂性以及由此产生的分类规则。我们比较了Box算法和SVM的实验表明,在大多数情况下,Box算法的性能要优于SVM。

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