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Multiobjective Pareto Ordinal Classification for Predictive Microbiology

机译:用于预测微生物学的多目标Pareto序数分类

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This paper proposes the use of a Memetic Multiobjective Evolutionary Algorithm (MOEA) based on Pareto dominance to solve two ordinal classification problems in predictive microbiology. Ordinal classification problems are those ones where there is order between the classes because of the nature of the problem. Ordinal classification algorithms may take advantage of this situation to improve its classification. To guide the MOEA, two non-cooperative metrics have been used for ordinal classification: the Average of the Mean Absolute Error, and the Maximum Mean Absolute Error of all the classes. The MOEA uses an ordinal regression model with Artificial Neural Networks to classify the growth classes of microorganisms such as Listeria monocytogenes and Staphylococcus aureus.
机译:本文提出了一种基于Pareto优势的麦克酸多目标进化算法(MOEA)来解决预测微生物学中的两个序数分类问题。序数分类问题是由于问题的性质而在课程之间有所命令的问题。序数分类算法可能利用这种情况来改善其分类。为了引导MoA,两个非合作指标用于序数分类:平均绝对误差的平均值,以及所有类的最大平均值误差。 MOEA使用具有人工神经网络的序数回归模型,分类微生物的生长类,例如李斯特菌单核细胞增生和金黄色葡萄球菌。

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