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Comparison of Adaptive Network Based Fuzzy Inference Systems and B-spline Neuro-Fuzzy Mode Choice Models

机译:基于自适应网络的模糊推理系统与B样条神经模糊模式选择模型的比较

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摘要

This paper investigates the use of neuro-fuzzy models for behavioral mode choice modeling. The concept of neuro-fuzzy models has emerged in recent years as researchers have tried to combine the transparent, linguistic representation of a fuzzy system with the learning ability of artificial neural networks. Several neuro-fuzzy systems have been reported in the literature. They include various representations and architectures and therefore are suitable for different applications. In this paper, the performance of two of the most widely used neuro-fuzzy models, namely: B-spline associative memory networks and adaptive network based fuzzy inference systems, is compared. The theoretical backgrounds of both systems are presented and their relative advantages are discussed using a mode choice modeling case study. Areas of comparison include: model performance, dealing with the curse of dimensionality, automatic exclusion of irrelevant inputs, and model transparency.
机译:本文研究了神经模糊模型在行为模式选择建模中的使用。近年来,随着研究人员试图将模糊系统的透明语言表示与人工神经网络的学习能力相结合,出现了神经模糊模型的概念。文献中已经报道了几种神经模糊系统。它们包括各种表示形式和体系结构,因此适用于不同的应用程序。在本文中,比较了两种最广泛使用的神经模糊模型的性能:B样条联想存储网络和基于自适应网络的模糊推理系统。介绍了两种系统的理论背景,并通过模式选择建模案例研究讨论了它们的相对优势。比较范围包括:模型性能,处理维数的诅咒,自动排除不相关的输入以及模型透明性。

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