Regularized extreme learning adaptive neuro-fuzzy algorithm for regression and classification

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摘要

This paper incorporates the regularization strategy of kernel based extreme learning machines (ELM) to improve the performance of a neuro-fuzzy learning machine. The proposed learning machine, regularized extreme learning adaptive neuro-fuzzy inference system (R-ELANFIS), has the advantages of reduced randomness, reduced computational complexity and better generalization. The parameters of the fuzzy layer of R-ELANFIS are randomly selected by incorporating the explicit knowledge representation using fuzzy membership functions. The parameters of the linear neural layer are determined by solving a constrained optimization problem in a regularized framework. Simulations on regression problems show that R-ELANFIS achieves similar or better generalization performance compared to well known kernel based regression methods and ELM based neuro-fuzzy systems. The proposed method can also be applied to multi-class classification problems.

论文关键词:Neuro-fuzzy systems,Extreme learning machines,Kernel based learning,Regularization,Regression,Multi-class classification

论文评审过程:Received 25 November 2016, Revised 19 April 2017, Accepted 20 April 2017, Available online 21 April 2017, Version of Record 12 May 2017.

论文官网地址:https://doi.org/10.1016/j.knosys.2017.04.007