Enhancements to probabilistic neural networks

D. Specht
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引用次数: 197

Abstract

Probabilistic neural networks (PNNs) learn quickly from examples in one pass and asymptotically achieve the Bayes-optimal decision boundaries. The major disadvantage of a PNN stems from the fact that it requires one node or neuron for each training pattern. Various clustering techniques have been proposed to reduce this requirement to one node per cluster center. The correct choice of clustering technique will depend on the data distribution, data rate, and hardware implementation. Adaptation of kernel shape provides a tradeoff of increased accuracy for increased complexity and training time. The technique described also provides a basis for automatic feature selection and dimensionality reduction.<>
增强概率神经网络
概率神经网络(PNNs)能够快速地从一个例子中学习,并渐近地达到贝叶斯最优决策边界。PNN的主要缺点是每个训练模式需要一个节点或神经元。已经提出了各种聚类技术来将这种需求减少到每个集群中心一个节点。正确选择聚类技术取决于数据分布、数据速率和硬件实现。核形状的调整提供了提高精度和增加复杂性和训练时间的折衷。所描述的技术也为自动特征选择和降维提供了基础。
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