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Fuzzy data analysis with NEFCLASS

机译:使用NEFCLASS进行模糊数据分析

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摘要

Fuzzy data analysis as we interpret it in this paper is the application of fuzzy systems to the analysis of crisp data. In this area, neuro-fuzzy systems play a very prominent role and are applied to a variety of data analysis problems like classification, function approximation or time series prediction. Fuzzy data analysis in general and neuro-fuzzy methods in particular make it easy to strike a balance between accuracy and inter-pretability. This is an interesting feature for intelligent data analysis and shall be discussed in this paper. We interpret data analysis as a process that is exploratory to some extent. In order for neuro-fuzzy learning to support this aspect we require fast and simple learning algorithms that result in small rule bases, which can be interpreted easily. The goal is to obtain simple intuitive models for interpretation and prediction. We show how the current version of the NEFCLASS structure learning algorithms support this requirement.
机译:正如我们在本文中解释的那样,模糊数据分析是模糊系统在分析清晰数据中的应用。在这一领域,神经模糊系统扮演着非常重要的角色,并被应用于各种数据分析问题,例如分类,函数逼近或时间序列预测。常规的模糊数据分析,尤其是神经模糊的方法,可以很容易地在准确性和可解释性之间取得平衡。这是用于智能数据分析的有趣功能,将在本文中进行讨论。我们将数据分析解释为某种程度上具有探索性的过程。为了使神经模糊学习支持这一方面,我们需要快速而简单的学习算法,这些算法会产生小的规则库,这些规则库很容易解释。目的是获得用于解释和预测的简单直观模型。我们将说明当前版本的NEFCLASS结构学习算法如何支持此要求。

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