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A Mixed-Attribute Approach in Ant-Miner Classification Rule Discovery Algorithm

机译:蚂蚁矿工分类规则发现算法中的混合属性方法

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摘要

In this paper, we introduce Ant-MinerMA to tackle mixed-attribute classification problems. Most classification problems involve continuous, ordinal and categorical attributes. The majority of Ant Colony Optimization (ACO) classification algorithms have the limitation of being able to handle categorical attributes only, with few exceptions that use a discretisation procedure when handling continuous attributes either in a preprocessing stage or during the rule creation. Using a solution archive as a pheromone model, inspired by the ACO for mixed-variable optimization (ACO-MV), we eliminate the need for a discretisation procedure and attributes can be treated directly as continuous, ordinal, or categorical. We compared the proposed Ant-MinerMA against cAnt-Miner, an ACO-based classification algorithm that uses a discretisation procedure in the rule construction process. Our results show that Ant-MinerMA achieved significant improvements on computational time due to the elimination of the discretisation procedure without affecting the predictive performance.
机译:在本文中,我们介绍了Ant-MinerMA来解决混合属性分类问题。大多数分类问题涉及连续,序数和分类属性。大多数蚁群优化(ACO)分类算法都具有只能处理分类属性的局限性,只有少数例外,在预处理阶段或规则创建过程中处理连续属性时会使用离散化过程。在ACO的启发下,使用解决方案档案库作为信息素模型,以进行混合变量优化(ACO-MV),我们无需进行离散化程序,并且可以将属性直接视为连续,有序或分类的。我们将提出的Ant-MinerMA与cAnt-Miner进行了比较,cAnt-Miner是一种基于ACO的分类算法,在规则构建过程中使用了离散化过程。我们的结果表明,由于消除了离散化程序而不会影响预测性能,因此Ant-MinerMA大大提高了计算时间。

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