一种基于归一化切割的进化多目标离散化方法

M. Hajizadeh-Tahan, M. Ghasemzadeh
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引用次数: 2

摘要

学习模型和相关结果取决于输入数据的质量。如果原始数据没有得到正确的清理和结构化,结果往往是不正确的。因此,离散化作为一种预处理技术在学习过程中起着重要的作用。在离散化过程中最重要的挑战是减少特征值的数量。该操作应保持特征之间的关系,并提高分类算法的准确性。本文提出了一种新的多目标进化算法。该算法采用三个目标函数实现高质量的离散化。第一个和第二个目标分别最小化所选切割点的数量和分类误差。第三个目标引入了一个称为归一化切割的新标准,它使用它们的特征值之间的关系来保持数据的性质。使用20个基准数据集对算法的性能进行了测试。通过比较和非参数统计检验的结果表明,该算法比现有的主要方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Evolutionary Multi-objective Discretization based on Normalized Cut
Learning models and related results depend on the quality of the input data. If raw data is not properly cleaned and structured, the results are tending to be incorrect. Therefore, discretization as one of the preprocessing techniques plays an important role in learning processes. The most important challenge in the discretization process is to reduce the number of features’ values. This operation should be applied in a way that relationships between the features are maintained and accuracy of the classification algorithms would increase. In this paper, a new evolutionary multi-objective algorithm is presented. The proposed algorithm uses three objective functions to achieve high-quality discretization. The first and second objectives minimize the number of selected cut points and classification error, respectively. The third objective introduces a new criterion called the normalized cut, which uses the relationships between their features’ values to maintain the nature of the data. The performance of the proposed algorithm was tested using 20 benchmark datasets. According to the comparisons and the results of nonparametric statistical tests, the proposed algorithm has a better performance than other existing major methods.
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