Ordering fuzzy sets generated by a neural network algorithm

L. Sztandera
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引用次数: 2

Abstract

Ordering fuzzy subsets is an important event in dealing with fuzzy decision problems in many areas. This issue has been of concern for many researchers over the years. Also, in the last several years, there has been a large and energetic upswing in neuroengineering research aimed at synthesizing fuzzy logic with computational neural networks. The two technologies often complement each other: neural networks supply the brute force necessary to accommodate and interpret large amounts of sensor data and fuzzy logic provides a structural framework that utilizes and exploits these low-level results. As a neural network is well known for its ability to represent functions, and the basis of every fuzzy model is the membership function, so the natural application of neural networks in fuzzy models has emerged to provide good approximations to the membership functions that are essential to the success of the fuzzy approach. This paper evaluates and analyzes the performance of available methods of ranking fuzzy subsets on a set of selected examples that cover possible situations we might encounter as defining fuzzy subsets at each node of a neural network. Through this analysis, suggestions as to which methods have better performance for utilization in neural network architectures, as well as criteria for choosing an appropriate method for ranking are made.
用神经网络算法生成排序模糊集
在许多领域,模糊子集排序是处理模糊决策问题的一个重要问题。多年来,这个问题一直是许多研究人员关注的问题。此外,在过去的几年里,在神经工程研究中出现了一个巨大的、充满活力的上升,旨在将模糊逻辑与计算神经网络相结合。这两种技术经常相互补充:神经网络提供了容纳和解释大量传感器数据所需的蛮力,模糊逻辑提供了利用和利用这些低级结果的结构框架。由于神经网络以其表示函数的能力而闻名,并且每个模糊模型的基础都是隶属函数,因此神经网络在模糊模型中的自然应用已经出现,以提供对隶属函数的良好近似,这对模糊方法的成功至关重要。本文评估和分析了在一组选定的示例上对模糊子集排序的可用方法的性能,这些示例涵盖了我们在神经网络的每个节点上定义模糊子集时可能遇到的情况。通过分析,提出了哪些方法在神经网络架构中使用性能更好的建议,以及选择合适的排序方法的标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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