Gabrys B, Bargiela A
Real Time Telemetry Systems, Department of Computing, Nottingham Trent University, Nottingham NG1 4BU, UK.
IEEE Trans Neural Netw. 2000;11(3):769-83. doi: 10.1109/72.846747.
This paper describes a general fuzzy min-max (GFMM) neural network which is a generalization and extension of the fuzzy min-max clustering and classification algorithms developed by Simpson. The GFMM method combines the supervised and unsupervised learning within a single training algorithm. The fusion of clustering and classification resulted in an algorithm that can be used as pure clustering, pure classification, or hybrid clustering classification. This hybrid system exhibits an interesting property of finding decision boundaries between classes while clustering patterns that cannot be said to belong to any of existing classes. Similarly to the original algorithms, the hyperbox fuzzy sets are used as a representation of clusters and classes. Learning is usually completed in a few passes through the data and consists of placing and adjusting the hyperboxes in the pattern space which is referred to as an expansion-contraction process. The classification results can be crisp or fuzzy. New data can be included without the need for retraining. While retaining all the interesting features of the original algorithms, a number of modifications to their definition have been made in order to accommodate fuzzy input patterns in the form of lower and upper bounds, combine the supervised and unsupervised learning, and improve the effectiveness of operations. A detailed account of the GFMM neural network, its comparison with the Simpson's fuzzy min-max neural networks, a set of examples, and an application to the leakage detection and identification in water distribution systems are given.
本文描述了一种通用模糊最小-最大(GFMM)神经网络,它是对辛普森开发的模糊最小-最大聚类和分类算法的推广与扩展。GFMM方法在单一训练算法中结合了监督学习和无监督学习。聚类与分类的融合产生了一种可作为纯聚类、纯分类或混合聚类分类使用的算法。这个混合系统展现出一个有趣的特性,即在对不能明确归属于任何现有类别的模式进行聚类时,能够找到类之间的决策边界。与原始算法类似,超盒模糊集被用作聚类和类别的表示。学习通常通过对数据进行几次遍历即可完成,包括在模式空间中放置和调整超盒,这一过程被称为扩张-收缩过程。分类结果可以是清晰的或模糊的。新数据可以被纳入而无需重新训练。在保留原始算法所有有趣特性的同时,对其定义进行了一些修改,以适应上下界形式的模糊输入模式,结合监督学习和无监督学习,并提高操作的有效性。文中给出了GFMM神经网络的详细说明、它与辛普森模糊最小-最大神经网络的比较、一组示例以及在供水系统泄漏检测与识别中的应用。