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首页> 外文期刊>Journal of Experimental & Theoretical Artificial Intelligence >A new classifier ensemble methodology based on subspace learning
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A new classifier ensemble methodology based on subspace learning

机译:基于子空间学习的新分类器集成方法

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摘要

Different classifiers with different characteristics and methodologies can complement each other and cover their internal weaknesses; so classifier ensemble is an important approach to handle the weakness of single classifier based systems. In this article we explore an automatic and fast function to approximate the accuracy of a given classifier on a typical dataset. Then employing the function, we can convert the ensemble learning to an optimisation problem. So, in this article, the target is to achieve a model to approximate the performance of a predetermined classifier over each arbitrary dataset. According to this model, an optimisation problem is designed and a genetic algorithm is employed as an optimiser to explore the best classifier set in each subspace. The proposed ensemble methodology is called classifier ensemble based on subspace learning (CEBSL). CEBSL is examined on some datasets and it shows considerable improvements.
机译:具有不同特征和方法的不同分类器可以相互补充并弥补其内部弱点;因此,分类器集成是处理基于单个分类器的系统的弱点的重要方法。在本文中,我们探索了一种自动且快速的功能,以近似典型数据集上给定分类器的准确性。然后使用该函数,我们可以将集成学习转换为优化问题。因此,在本文中,目标是要获得一个模型,以近似评估每个任意数据集上预定分类器的性能。根据该模型,设计了一个优化问题,并采用遗传算法作为优化器来探索每个子空间中的最佳分类器集。所提出的集成方法称为基于子空间学习的分类器集成(CEBSL)。在某些数据集上检查了CEBSL,它显示出可观的改进。

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