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High dimensional neurofuzzy systems: overcoming the curse of dimensionality

机译:高维神经模糊系统:克服维数的诅咒

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Many researchers do not appreciate the problems in building high-dimensional fuzzy models or control surfaces, yet this task has occupied researchers in several fields for the past thirty years. The problems occur due to the lack of both available training data and the required computational resources necessary for building and calculating the response of the model. This paper outlines several techniques for partially overcoming the curse of dimensionality associated with high-dimensional data modelling problems and compares and contrasts them with several algorithms developed in the statistical community. The work is intended to outline both conventional concepts which can be usefully applied in neurofuzzy models and new developments in this field.
机译:许多研究人员没有意识到构建高维模糊模型或控制曲面时遇到的问题,但是在过去的三十年中,这项任务一直困扰着多个领域的研究人员。由于缺少可用的训练数据和构建和计算模型响应所需的必需计算资源,因此出现了问题。本文概述了部分克服与高维数据建模问题相关的维数诅咒的技术,并将其与统计界开发的几种算法进行比较和对比。这项工作旨在概述可以有效地应用于神经模糊模型的常规概念以及该领域的新发展。

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