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SEPA: Structure Evolution and Parameter Adaptation in Feed-Forward Neural Networks

机译:SEPA:前馈神经网络中的结构演进和参数适应

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In developing algorithms that dynamically changes the structure and weights of ANN (Artificial Neural Networks), there must be a proper balance between network complexity and its generalization capability. SEPA addresses these issues using an encoding scheme where network weights and connections are encoded in matrices of real numbers. Network parameters are locally encoded and locally adapted with fitness evaluation consisting mainly of fast feed-forward operations. Experimental results in some well-known classification problems demonstrate SEPA's high consistency performance in classification, fast convergence, and good optimality of structure.
机译:在动态地改变ANN(人工神经网络)结构和权重的开发算法中,网络复杂性与其泛化能力必须具有适当的平衡。 SEPA使用编码方案来解决这些问题,其中网络权重和连接在实数的矩阵中编码。网络参数在本地编码和本地适用于适合性评估,主要由快速前馈操作组成。一些着名的分类问题的实验结果表明了SEPA在分类,快速收敛性和结构上的良好最优性方面的高稠度性能。

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