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Semantic Learning Machine: A Feedforward Neural Network Construction Algorithm Inspired by Geometric Semantic Genetic Programming

机译:语义学习机:几何几何遗传规划启发的前馈神经网络构建算法

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Geometric Semantic Genetic Programming (GSGP) is a recently proposed form of Genetic Programming in which the fitness landscape seen by its variation operators is unimodal with a linear slope by construction and, consequently, easy to search. This is valid across all supervised learning problems. In this paper we propose a feedforward Neural Network construction algorithm derived from GSGP. This algorithm shares the same fitness landscape as GSGP, which allows an efficient search to be performed on the space of feedforward Neural Networks, without the need to use backpropagation. Experiments are conducted on real-life multidimensional symbolic regression datasets and results show that the proposed algorithm is able to surpass GSGP, with statistical significance, in terms of learning the training data. In terms of generalization, results are similar to GSGP.
机译:几何语义遗传规划(GSGP)是遗传规划中最近提出的一种形式,其变异算子所看到的适应度景观是单峰的,具有线性线性斜率,因此易于搜索。这在所有有监督的学习问题中都是有效的。本文提出了一种基于GSGP的前馈神经网络构造算法。该算法与GSGP具有相同的适用范围,从而可以在前馈神经网络的空间上执行有效搜索,而无需使用反向传播。在现实生活中的多维符号回归数据集上进行了实验,结果表明,该算法在学习训练数据方面能够超越GSGP,具有统计意义。在泛化方面,结果与GSGP相似。

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