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Including a simplicity criterion in the selection of the best rule in a genetic fuzzy learning algorithm

机译:在遗传模糊学习算法的最佳规则选择中包括简单性准则

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Learning algorithms can obtain very useful descriptions of several problems. Many different alternative descriptions can be generated. In many cases, a simple description is preferable since it has a higher possibility of being valid in unseen cases and also it is usually easier to understand by a human expert. Thus, the main idea of this paper is to propose simplicity criteria and to include them in a learning algorithm. In this case, the learning algorithm will reward the simplest descriptions. We study simplicity criteria in the selection of fuzzy rules in the genetic fuzzy learning algorithm called SLAVE.
机译:学习算法可以获得关于几个问题的非常有用的描述。可以生成许多不同的替代描述。在许多情况下,最好使用简单的描述,因为它有较高的可能性在看不见的情况下有效,而且通常更容易被人类专家理解。因此,本文的主要思想是提出简单性标准,并将其包括在学习算法中。在这种情况下,学习算法将奖励最简单的描述。我们在称为SLAVE的遗传模糊学习算法中选择模糊规则时研究简单性准则。

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