In this article, we propose the approach to procedural optimization of a neural network, based on the combination of information theory and braid theory. The network studied in the article implemented with the intersections between the braid strands, as well as simplified networks (a network with strands without intersections and a simple convolutional deep neural network), are used to solve various problems of multiclass image classification that allow us to analyze the comparative effectiveness of the proposed architecture. The simulation results showed BraidNet's comparative advantage in learning speed and classification accuracy.
翻译:在文章中,我们提议以信息理论和编织理论相结合为基础,在程序上优化神经网络的方法。文章中研究的网络与条形线之间的交叉点以及简化的网络(没有交叉点的线条和简单的革命性深层神经网络)一起实施,用来解决多级图像分类的各种问题,从而使我们能够分析拟议结构的相对有效性。模拟结果表明,BraidNet在学习速度和分类准确性方面具有比较优势。