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Fuzzy decision neural networks and application to data fusion

机译:模糊决策神经网络与数据融合的应用

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A decision-based neural network (DBNN) is extended to a fuzzy-decision neural network (FDNN), which is shown to offer classification/generalization performance improvements, especially when the data are not clearly separable. The hierarchical structure adopted make the computation process very efficient. The learning rule and some key properties of FDNN are described. A Bayesian paradigm offers an optimal approach to data fusion. This approach is explored. DBNN, together with a Bayesian approach, is proposed to formulate the data fusion process.
机译:基于决策的神经网络(DBNN)扩展到模糊判决神经网络(FDNN),其被示出提供分类/泛化性能改进,尤其是当数据不明确可分离时。采用的分层结构使得计算过程非常有效。描述了FDNN的学习规则和一些关键属性。贝叶斯范式提供了对数据融合的最佳方法。探索这种方法。 DBNN与贝叶斯方法一起建议制定数据融合过程。

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