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Use of intervals for soft classification in fuzzy neural networks

机译:模糊神经网络中使用间隔进行软分类

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Neural networks can be used to classify input data into one of a given set of categories. With limited training sets, crisp neural network results are predictably poor. Incorporation of fuzzy techniques improves performance in these cases. Even though fuzzy neural networks classify imprecise data quite well, the incorporation of a soft decision classification lowers the error rate substantially. This paper discusses methods for soft decision making, including a method that uses intervals. A neuro-fuzzy system that classifies input vectors is examined. This neuro-fuzzy system not only uses intervals in a fuzzy neural network, but also employs a method of utilizing intervals in a soft decision for classification. This neuro-fuzzy system's performance in computer simulations is examined and compared 'with crisp neural networks' performance.
机译:神经网络可用于将输入数据分类为给定的一组类别之一。通过有限的培训集,清晰的神经网络结果可预测可预测差。掺入模糊技术在这些情况下提高了性能。尽管模糊神经网络非常好,但掺入软判决分类即使基本上会降低错误率。本文讨论了软决策的方法,包括使用间隔的方法。检查分类输入向量的神经模糊系统。这种神经模糊系统不仅在模糊神经网络中使用间隔,而且还采用了一种利用间隔的方法来进行分类。这种神经模糊系统在计算机模拟中的性能被检查并与“神经网络清晰的神经网络”的性能进行了比较。

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