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Selecting Correct Methods to Extract Fuzzy Rules from Artificial Neural Network

机译:选择正确的方法从人工神经网络中提取模糊规则

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摘要

Artificial neural network (ANN) inherently cannot explain in a comprehensible form how a given decision or output is generated, which limits its extensive use. Fuzzy rules are an intuitive and reasonable representation to be used for explanation, model checking, and system integration. However, different methods may extract different rules from the same ANN. Which one can deliver good quality such that the ANN can be accurately described by the extracted fuzzy rules? In this paper, we perform an empirical study on three different rule extraction methods. The first method extracts fuzzy rules from a fuzzy neural network, while the second and third ones are originally designed to extract crisp rules, which can be transformed into fuzzy rules directly, from a well-trained ANN. In detail, in the second method, the behavior of a neuron is approximated by (continuous) Boolean functions with respect to its direct input neurons, whereas in the third method, the relationship between a neuron and its direct input neurons is described by a decision tree. We evaluate the three methods on discrete, continuous, and hybrid data sets by comparing the rules generated from sample data directly. The results show that the first method cannot generate proper fuzzy rules on the three kinds of data sets, the second one can generate accurate rules on discrete data, while the third one can generate fuzzy rules for all data sets but cannot always guarantee the accuracy, especially for data sets with poor separability. Hence, our work illustrates that, given an ANN, one should carefully select a method, sometimes even needs to design new methods for explanations.
机译:人工神经网络(ANN)本身无法以可理解的形式解释,如何生成给定的决定或输出,这限制了其广泛使用。模糊规则是一种直观且合理的表示,用于解释,模型检查和系统集成。但是,不同的方法可以从相同的ANN中提取不同的规则。哪一个可以提供良好的质量,以便通过提取的模糊规则准确地描述ANN?本文对三种不同规则提取方法进行了实证研究。第一种方法从模糊神经网络中提取模糊规则,而第二和第三个是最初设计用于提取CRESP规则,从训练有素的ANN中可以直接转化为模糊规则。详细地,在第二种方法中,神经元的行为近似(连续)布尔函数相对于其直接输入神经元近似,而在第三种方法中,神经元与其直接输入神经元之间的关系是由决定描述的树。我们通过比较直接从样本数据生成的规则来评估离散,连续和混合数据集的三种方法。结果表明,第一个方法不能在三种数据集上生成适当的模糊规则,第二个方法可以在离散数据上生成准确的规则,而第三个可以为所有数据集产生模糊规则,但不能始终保证准确性,特别是对于可分离性差的数据集。因此,我们的工作说明了,给定ANN,一个人应该仔细选择一种方法,有时甚至需要设计新方法进行解释。

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