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Induction of fuzzy decision trees and its refinement using gradient projected-neuro-fuzzy decision tree

机译:梯度投影神经模糊决策树的模糊决策树归纳与改进

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Fuzzy decision tree (FDT) induction is a powerful methodology to extract human interpretable classification rules. Due to the greedy nature of FDT, there is a chance of FDT resulting in poor classification accuracy. To improve the accuracy of FDT, Bhatt and Gopal (2006) have proposed a back propagation strategy, where the interpretability of derived fuzzy rules is affected, as the certainty factor of the rules does not lie within the theoretical bounds of 0 and 1. To retain the human interpretability of fuzzy rules, and to make rules consistent with fuzzy set theory, we restrict the values of certainty factor to lie within theoretical bounds using the concept of gradient projection over neuro fuzzy decision tree and the model is named as Gradient Projected-Neuro-Fuzzy Decision Tree (GP-N-FDT). Here, the parameters of FDT developed using Fuzzy ID3 algorithm are fine tuned using GP-N-FDT strategy to improve the classification accuracy.
机译:模糊决策树(FDT)归纳法是提取人类可解释分类规则的强大方法。由于FDT的贪婪性,FDT可能会导致分类精度差。为了提高FDT的准确性,Bhatt和Gopal(2006)提出了一种反向传播策略,其中,由于规则的确定性因素不在0和1的理论范围内,因此影响了所导出模糊规则的可解释性。保留模糊规则的人类可解释性,并使规则与模糊集理论一致,我们使用神经模糊决策树上的梯度投影概念将确定性因子的值限制在理论范围内,并将该模型命名为Gradient Projected-神经模糊决策树(GP-N-FDT)。此处,使用GP-N-FDT策略对使用Fuzzy ID3算法开发的FDT的参数进行微调,以提高分类精度。

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