IEEE Trans Cybern. 2013 Dec;43(6):1781-95. doi: 10.1109/TSMCB.2012.2230253.
Current studies of type-2 neural fuzzy systems (FSs) (NFSs) primarily focus on building a fuzzy model with high accuracy and disregard the interpretability of fuzzy rules. This paper proposes a data-driven interval type-2 (IT2) NFS with improved model interpretability (DIT2NFS-IP). The DIT2NFS-IP uses IT2 fuzzy sets in its antecedent part and intervals in its zero-order Takagi-Sugeno-Kang-type consequent part for rule form simplicity. The initial rule base is generated by a self-splitting clustering algorithm in the input-output space. The DIT2NFS-IP uses a two-phase parameter-learning algorithm to design an accurate model with improved rule interpretability. In the first phase, a new cost function that considers both accuracy and transparent fuzzy set partition is defined. The antecedent and consequent parameters are learned through gradient descent and rule-ordered recursive least squares algorithms, respectively, to achieve cost function minimization. The second phase performs a fuzzy set reduction, followed by consequent parameter learning to improve accuracy. Comparisons with different type-1 and type-2 FSs in five databased modeling and prediction problems verify the performance of the DIT2NFS-IP in both model accuracy and interpretability.
目前,关于二阶型神经网络模糊系统(NFS)的研究主要集中在构建高精度的模糊模型上,而忽略了模糊规则的可解释性。本文提出了一种具有改进模型可解释性的数据驱动型区间二阶型(IT2)NFS(DIT2NFS-IP)。DIT2NFS-IP 在其前件部分使用 IT2 模糊集,在其零阶 Takagi-Sugeno-Kang 型后件部分使用区间,以简化规则形式。初始规则库是通过输入输出空间的自分裂聚类算法生成的。DIT2NFS-IP 使用两阶段参数学习算法来设计具有改进规则可解释性的精确模型。在第一阶段,定义了一个新的成本函数,该函数同时考虑了准确性和透明的模糊集划分。通过梯度下降和规则有序递归最小二乘算法分别学习前件和后件参数,以实现成本函数最小化。第二阶段进行模糊集约简,然后进行后件参数学习以提高准确性。在五个基于数据库的建模和预测问题中,与不同的一阶和二阶 FSs 的比较验证了 DIT2NFS-IP 在模型准确性和可解释性方面的性能。