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Discretization of Continuous Attributes in Rough Set Theory and Its Application

机译:粗糙集理论中连续属性的离散化及其应用

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摘要

Existing discretization methods cannot process continuous interval-valued attributes in rough set theory. This paper extended the existing definition of discretization based on cut-splitting and gave the definition of generalized discretization using class-separability criterion function firstly. Then, a new approach was proposed to discretize continuous interval-valued attributes. The introduced approach emphasized on the class-separability in the process of discretization of continuous attributes, so the approach helped to simplify the classifier design and to enhance accurate recognition rate in pattern recognition and machine learning. In the simulation experiment, the decision table was composed of 8 features and 10 radar emitter signals, and the results obtained from discretization of continuous interval-valued attributes, reduction of attributes and automatic recognition of 10 radar emitter signals show that the reduced attribute set achieves higher accurate recognition rate than the original attribute set, which verifies that the introduced approach is valid and feasible.
机译:在粗糙集理论中,现有的离散化方法无法处理连续的区间值属性。本文扩展了基于割裂的离散化的现有定义,并首先利用类可分离性准则函数给出了广义离散化的定义。然后,提出了一种新的方法来离散化连续区间值属性。引入的方法强调了连续属性离散化过程中的类可分离性,因此该方法有助于简化分类器设计并提高模式识别和机器学习中的准确识别率。在仿真实验中,决策表由8个特征和10个雷达发射器信号组成,对连续间隔值属性进行离散化,属性约简和10个雷达发射器信号的自动识别所获得的结果表明,减少后的属性集达到了比原始属性集具有更高的准确识别率,这证明所引入的方法是有效和可行的。

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