首页> 外文会议>Hybrid Intelligent Systems, 2006. HIS '06. Sixth International Conference on >Designing Fuzzy Ensemble Classifiers by Evolutionary Multiobjective Optimization with an Entropy-Based Diversity Criterion
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Designing Fuzzy Ensemble Classifiers by Evolutionary Multiobjective Optimization with an Entropy-Based Diversity Criterion

机译:基于熵的分集准则的进化多目标优化设计模糊集成分类器

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In this paper, we propose a multi-classifier coding scheme and an entropy-based diversity criterion in evolutionary multiobjective optimization algorithms for the design of fuzzy ensemble classifiers. In a multi-classifier coding scheme, an ensemble classifier is coded as an integer string. Each string is evaluated by using its accuracy and diversity. We use two accuracy criteria. One is the overall classification rate of the string as an ensemble classifier. The other is the average classification rate of component classifiers in the ensemble classifier. As a diversity criterion, we use the entropy of outputs from component classifiers in the ensemble classifier. We examine four formulations based on the above criteria through computational experiments on benchmark data sets in the UCI machine learning repository. The experimental results show the effectiveness of the multi-classifier coding scheme and the entropy-based diversity criterion.
机译:在本文中,我们提出了一种用于模糊集成分类器设计的进化多目标优化算法中的多分类器编码方案和基于熵的分集准则。在多分类器编码方案中,集成分类器被编码为整数字符串。通过使用其准确性和多样性来评估每个字符串。我们使用两个准确性标准。一种是作为整体分类器的字符串的整体分类率。另一个是集合分类器中组件分类器的平均分类率。作为分集标准,我们使用集合分类器中组件分类器的输出熵。我们通过对UCI机器学习存储库中的基准数据集进行计算实验,基于上述标准检查了四种公式。实验结果证明了多分类器编码方案和基于熵的分集准则的有效性。

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