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基于模糊 c-均值的概率神经网络体系结构约简。

Fuzzy c-means-based architecture reduction of a probabilistic neural network.

机构信息

Faculty of Electrical and Computer Engineering, Rzeszow University of Technology, al. Powstancow Warszawy 12, 35-959 Rzeszow, Poland.

出版信息

Neural Netw. 2018 Dec;108:20-32. doi: 10.1016/j.neunet.2018.07.012. Epub 2018 Aug 4.

Abstract

The efficiency of the probabilistic neural network (PNN) is very sensitive to the cardinality of a considered input data set. It results from the design of the network's pattern layer. In this layer, the neurons perform an activation on all input records. This makes the PNN architecture complex, especially for big data classification tasks. In this paper, a new algorithm for the structure reduction of the PNN is put forward. The solution relies on performing a fuzzy c-means data clustering and selecting PNN's pattern neurons on the basis of the obtained centroids. Then, to activate the pattern neurons, the algorithm chooses input vectors for which the highest values of the membership coefficients are determined. The proposed approach is applied to the classification tasks of repository data sets. PNN is trained by three different classification procedures: conjugate gradients, reinforcement learning and the plugin method. Two types of kernel estimators are used to activate the neurons of the network. A 10-fold cross validation errors for the original and the reduced PNNs are compared. Received results confirm the validity of the introduced algorithm.

摘要

概率神经网络 (PNN) 的效率对所考虑的输入数据集的基数非常敏感。这是由于网络模式层的设计造成的。在该层中,神经元对所有输入记录进行激活。这使得 PNN 架构变得复杂,特别是对于大数据分类任务。在本文中,提出了一种用于 PNN 结构缩减的新算法。该解决方案依赖于执行模糊 c-均值数据聚类,并根据获得的质心选择 PNN 的模式神经元。然后,为了激活模式神经元,该算法选择确定隶属度系数值最高的输入向量。所提出的方法应用于存储库数据集的分类任务。通过三种不同的分类程序对 PNN 进行训练:共轭梯度、强化学习和插件方法。使用两种核估计器来激活网络的神经元。比较了原始 PNN 和简化 PNN 的 10 倍交叉验证错误。得到的结果证实了所提出算法的有效性。

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