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Supervised fuzzy ART: training of a neural network for pattern classification via combining supervised and unsupervised learning

机译:监督模糊艺术:通过组合监督和无监督学习培训用于模式分类的神经网络

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A neural network model that incorporates a supervised mechanism into a fuzzy automated reasoning tool (ART) is presented. In any time, the training instances may or may not have desired outputs, that is, this model can handle supervised learning and unsupervised learning simultaneously. The unsupervised component finds the cluster relations of instances. Then the supervised component learns the desired associations between clusters and categories. This model has the ability of incremental learning. It works equally well when instances in a cluster belong to different categories. Multicategory and nonconvex classifications can also be dealt with.
机译:提出了一种神经网络模型,其将监督机制融入模糊自动推理工具(ART)。在任何时候,培训实例可能也可能没有所需的输出,即,此模型可以同时处理监督学习和无监督的学习。无监督的组件找到了实例的群集关系。然后,监督组件了解群集和类别之间所需的关联。该模型具有增量学习的能力。当集群中的实例属于不同类别时,它同样工作。也可以处理多核和非渗透分类。

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