A Discretization Algorithm Based on Clustering and CAIR Criterion

Chaoqun Yi, Jianping Li, Enming Dong
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引用次数: 2

Abstract

Discretization algorithms play an important role in machine learning. Traditionally, the discretization methods using the Class- Attribute contingency table always take the boundary points as the initializing intervals' partition points. For it doesn't take care of the data distributing and include the large number of the initialized intervals partition points, so that cause large amount of calculation and unreasonable discretization schemes. To consider the interdependent between the class and attributes as well as the data distributing, a discretization algorithm based on clustering and CAIR criterion is proposed. It uses the NCL clustering to find the initialized intervals partition points, and takes the CAIR criterion as a threshold to reselect the partition points. We feed data discretized by our method into SVM classifier. The experimental results demonstrate that our algorithm is effective not only for fewer rules, but also for higher classification accuracy .
基于聚类和CAIR准则的离散化算法
离散化算法在机器学习中起着重要的作用。传统的类属性列联表离散化方法总是将边界点作为初始化区间的划分点。由于它不考虑数据分布,包含大量初始化区间划分点,导致计算量大,离散化方案不合理。考虑到类与属性之间的相互依赖关系以及数据的分布,提出了一种基于聚类和CAIR准则的离散化算法。它使用NCL聚类来寻找初始化间隔的分区点,并以CAIR准则作为阈值重新选择分区点。将该方法离散后的数据输入支持向量机分类器。实验结果表明,该算法不仅在规则较少的情况下有效,而且具有较高的分类精度。
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