The handling of don't care attributes

Hahn-Ming Lee, Ching-Chi Hsu
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引用次数: 7

Abstract

A critical factor that affects the performance of neural network training algorithms and the generalization of trained networks is the training instances. The authors consider the handling of don't care attributes in training instances. Several approaches are discussed and their experimental results are presented. The following approaches are considered: (1) replace don't care attributes with a fixed value; (2) replace don't care attributes with their maximum or minimum encoded values; (3) replace don't care attributes with their maximum and minimum encoded values; and (4) replace don't care attributes with all their possible encoded values.<>
对不在乎属性的处理
影响神经网络训练算法性能和训练网络泛化的一个关键因素是训练实例。作者考虑了在训练实例中不关心属性的处理。讨论了几种方法,并给出了实验结果。考虑以下方法:(1)用固定值替换不关心属性;(2)将不关心属性替换为其最大或最小编码值;(3)将不关心属性替换为其编码值的最大值和最小值;(4)用所有可能的编码值替换不关心属性。
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