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Discretization Method of Continuous Attributes Based on Decision Attributes

机译:基于决策属性的连续属性离散化方法

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The attributes in rough set must be discretized, but the general theory on discretization did not think about the decision attribute adequately during discretization of data, as a result, it leads to several redundant rules and lower calculation efficiency. The discretization method of continuous attributes based on decision attributes which is discussed in this paper gives more attention to both significance of attributes and the decision attributes. The continuous attributes are discretized in sequence according to their significance. The result shows less breakpoints and higher recognition accuracy. The experiment on database Iris for UCI robot learning validates the feasibility of our method. Comparing the result with documents [6] and [11], the method given in this paper shows higher recognition accuracy and much less breakpoints.
机译:粗糙集中的属性必须进行离散化,但是离散化的一般理论在数据离散化过程中并未充分考虑决策属性,结果导致了一些冗余规则和较低的计算效率。本文讨论的基于决策属性的连续属性离散化方法更加关注属性的重要性和决策属性。连续属性根据其重要性依次离散。结果显示出更少的断点和更高的识别精度。用于UCI机器人学习的数据库Iris的实验验证了我们方法的可行性。将结果与文献[6]和[11]进行比较,本文给出的方法显示出更高的识别精度和更少的断点。

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