软增强自构建神经模糊推理网络

Soft-Boosted Self-Constructing Neural Fuzzy Inference Network

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2015
被引 31
ABS 3

中文导读

提出一种软增强自构建神经模糊推理网络(SB-SONFIN),通过优化初始权重和参数学习率来降低误差并提升学习速度,在多个数据集上优于其他方法。

Abstract

This correspondence paper proposes an improved version of the self-constructing neural fuzzy inference network (SONFIN), called soft-boosted SONFIN (SB-SONFIN). The design softly boosts the learning process of the SONFIN in order to decrease the error rate and enhance the learning speed. The SB-SONFIN boosts the learning power of the SONFIN by taking into account the numbers of fuzzy rules and initial weights which are two important parameters of the SONFIN, SB-SONFIN advances the learning process by: 1) initializing the weights with the width of the fuzzy sets rather than just with random values and 2) improving the parameter learning rates with the number of learned fuzzy rules. The effectiveness of the proposed soft boosting scheme is validated on several real world and benchmark datasets. The experimental results show that the SB-SONFIN possesses the capability to outperform other known methods on various datasets.

计算机科学人工神经网络模糊逻辑机器学习模糊推理系统