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Optimization Algorithms for One-Class Classification Ensemble Pruning

机译:单级分类集合修剪优化算法

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One-class classification is considered as one of the most challenging topics in the contemporary machine learning. Creating Multiple Classifier Systems for this task has proven itself as a promising research direction. Here arises a problem on how to select valuable members to the committee - so far a largely unexplored area in one-class classification. Recently, a novel scheme utilizing a multi-objective ensemble pruning was proposed. It combines selecting best individual classifiers with maintaining the diversity of the committee pool. As it relies strongly on the search algorithm applied, we investigate here the performance of different methods. Five algorithms are examined - genetic algorithm, simulated annealing, tabu search and hybrid methods, combining the mentioned approaches in the form of memetic algorithms. Using compound optimization methods leads to a significant improvement over standard search methods. Experimental results carried on a number of benchmark datasets proves that careful examination of the search algorithms for one-class ensemble pruning may greatly contribute to the quality of the committee being formed.
机译:一流的分类被认为是当代机器学习中最具挑战性的主题之一。为此任务创建多个分类器系统已被证明是一种有前途的研究方向。这是关于如何为委员会选择有价值的会员的问题 - 到目前为止在一流的分类中是一个很大的未开发的地区。最近,提出了一种利用多目标集合修剪的新颖方案。它结合了选择最佳单独的分类器,以维护委员会池的多样性。正如它在所应用的搜索算法上强烈依赖,我们在此调查不同方法的性能。检查五种算法 - 遗传算法,模拟退火,禁忌搜索和混合方法,以麦克算法的形式结合所提到的方法。使用复合优化方法导致对标准搜索方法的显着改进。许多基准数据集承载的实验结果证明,仔细检查一流的集合修剪的搜索算法可能会大大促进委员会的质量。

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