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Constructive Cascade Learning Algorithm for Fully Connected Networks

机译:全连接网络的构造级联学习算法

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The Fully Connected Cascade Networks (FCCN) were originally proposed along with the Cascade Correlation (CasCor) learning algorithm that having three main advantages over the Multilayer Per-ceptron (MLP): the structure of the network could be determined dynamically; they were more powerful for complex feature representation; the training was efficient by optimizing newly added neuron only in every stage. However, at the same time, they were criticized that the freezing strategy usually resulted in an overlarge network with the architecture much deeper than necessary. To overcome the disadvantage, in this paper, a new hybrid constructive learning (HCL) algorithm is proposed to build a FCCN as compact as possible. The proposed HCL algorithm is compared with the CasCor algorithm and some other algorithms on several popular regression benchmarks.
机译:最初提出的全连接级联网络(FCCN)与级联相关(CasCor)学习算法一起提出,与多层感知器(MLP)相比,它具有三个主要优点:网络结构可以动态确定;对于复杂的特征表示,它们更强大;通过仅在每个阶段优化新添加的神经元,训练是有效的。但是,与此同时,他们也批评说,冻结策略通常会导致网络过大,其架构要比需要的要深得多。为了克服该缺点,本文提出了一种新的混合构造学习(HCL)算法,以构建尽可能紧凑的FCCN。在几种流行的回归基准上,将提出的HCL算法与CasCor算法和其他一些算法进行了比较。

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