A discretization algorithm based on information distance criterion and ant colony optimization algorithm for knowledge extracting on industrial database

Wenzhi Zhu, Jingcheng Wang, Yanbin Zhang, Lixin Jia
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引用次数: 8

Abstract

Discretization algorithms have played an important role in data mining, which is widely applied in industrial control. Since the current discretization methods can not accurately reflect the degree of the class-attribute interdependency of the industrial database, a new discretization algorithm, which is based on information distance criterion and ant colony optimization algorithm(ACO), is proposed. The paper analyses the information measures of the interdependence between two discrete variables, and an improved information distance criterion is generated to evaluate the class-attribute interdependency of the discretization scheme. In the algorithm, The ACO is applied to detect the optimal discretization scheme, and a new pheromone matrix is defined on the construction of the optimization, and an effective heuristic values assignment approach, which is used with the criterion values of discretization scheme, is proposed. We performed the experiments on a real industrial database. Experiment results verify that the proposed algorithm can produce a better discretization results.
基于信息距离准则和蚁群优化算法的工业数据库知识提取离散化算法
离散化算法在数据挖掘中起着重要的作用,在工业控制中有着广泛的应用。针对现有的离散化方法不能准确反映工业数据库的类属性相互依赖程度的问题,提出了一种基于信息距离准则和蚁群优化算法的工业数据库离散化算法。本文分析了离散变量间相互依赖的信息测度,提出了一种改进的信息距离准则来评价离散化方案的类属性相互依赖。该算法采用蚁群算法检测最优离散化方案,在优化方案的构造上定义了新的信息素矩阵,并提出了一种有效的启发式赋值方法,该方法与离散化方案的判据值相结合。我们在一个真实的工业数据库上进行了实验。实验结果表明,该算法能产生较好的离散化效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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