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首页> 外文期刊>International Journal of Neural Systems >IMPROVED ADAPTIVE SPLITTING AND SELECTION: THE HYBRID TRAINING METHOD OF A CLASSIFIER BASED ON A FEATURE SPACE PARTITIONING
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IMPROVED ADAPTIVE SPLITTING AND SELECTION: THE HYBRID TRAINING METHOD OF A CLASSIFIER BASED ON A FEATURE SPACE PARTITIONING

机译:改进的自适应分割和选择:基于特征空间划分的分类器混合训练方法

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摘要

Currently, methods of combined classification are the focus of intense research. A properly designed group of combined classifiers exploiting knowledge gathered in a pool of elementary classifiers can successfully outperform a single classifier. There are two essential issues to consider when creating combined classifiers: how to establish the most comprehensive pool and how to design a fusion model that allows for taking full advantage of the collected knowledge. In this work, we address the issues and propose an AdaSS+, training algorithm dedicated for the compound classifier system that effectively exploits local specialization of the elementary classifiers. An effective training procedure consists of two phases. The first phase detects the classifier competencies and adjusts the respective fusion parameters. The second phase boosts classification accuracy by elevating the degree of local specialization. The quality of the proposed algorithms are evaluated on the basis of a wide range of computer experiments that show that AdaSS+ can outperform the original method and several reference classifiers.
机译:当前,组合分类的方法是广泛研究的焦点。经过适当设计的一组组合分类器,可以利用在基本分类器池中收集的知识来成功胜过单个分类器。创建组合分类器时,有两个基本问题需要考虑:如何建立最全面的分类器以及如何设计融合模型以充分利用所收集的知识。在这项工作中,我们解决了这些问题,并提出了AdaSS +训练算法,专用于复合分类器系统,该算法可有效利用基本分类器的局部专业化。有效的培训程序包括两个阶段。第一阶段检测分类器能力并调整各自的融合参数。第二阶段通过提高局部专业化程度来提高分类准确性。在广泛的计算机实验的基础上,对所提出算法的质量进行了评估,这些实验表明AdaSS +可以胜过原始方法和一些参考分类器。

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