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Self-adaptive neuro-fuzzy systems: structure and learning

机译:自适应神经模糊系统:结构和学习

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This paper presents a systematic and fast learning algorithm for developing a parsimonious internal structure for self-adaptive neuro-fuzzy inference system (SANFIS). The rule extraction problem is cast as a clustering problem so that the number of rules and the number of term sets for input and output variables can be determined in an efficient and systematic way. The consequent of SANFIS could be fuzzy term sets, fuzzy singleton values, or functions of linear combination of input variables. Without a prior knowledge of the distribution of the training data set, the proposed mapping-constrained agglomerative clustering algorithm is able to reveal the true number of clusters and simultaneously estimate the centers and variances of the clusters for constructing an initial SANFIS structure in a single pass. Next, a fast linearonlinear parameter optimization algorithm is performed to further accelerate the learning convergence and improve the system performance.
机译:本文提出了一种系统的快速学习算法,用于开发自适应神经模糊推理系统(SANFIS)的简约内部结构。将规则提取问题转换为聚类问题,以便可以高效而系统地确定规则数量以及用于输入和输出变量的术语集的数量。 SANFIS的结果可能是模糊项集,模糊单例值或输入变量的线性组合函数。在没有训练数据集分布的先验知识的情况下,所提出的映射约束的聚集聚类算法能够揭示聚类的真实数量,并同时估计聚类的中心和方差,以便一次构建初始SANFIS结构。接下来,执行快速线性/非线性参数优化算法,以进一步加速学习收敛并提高系统性能。

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