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A deep machine learning algorithm for construction of the Kolmogorov-Arnold representation

机译:一种深度机械学习算法,用于建设Kolmogorov-Arnold表示

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The Kolmogorov-Arnold representation is a proven adequate replacement of a continuous multivariate function by a hierarchical structure of multiple functions of one variable. The proven existence of such representation inspired many researchers to search for a practical way of its construction, since such model answers the needs of machine learning. This article shows that the Kolmogorov-Arnold representation is not only a composition of functions but also a particular case of a tree of the discrete Urysohn operators. The article introduces new, quick and computationally stable algorithm for constructing of such Urysohn trees. Besides continuous multivariate functions, the suggested algorithm covers the cases with quantised inputs and combination of quantised and continuous inputs. The article also contains multiple results of testing of the suggested algorithm on publicly available datasets, used also by other researchers for benchmarking.
机译:Kolmogorov-Arnold表示是通过一个变量的多个函数的分层结构进行了持续的多变量函数的替代。经过验证的存在,这些代表激发了许多研究人员,以寻找其建设的实用方式,因为这种模型回答了机器学习的需要。本文表明,Kolmogorov-Arnold表示不仅是功能的组成,而且是离散uRysohn运算符的树树的特定情况。本文介绍了新的,快速和计算稳定的算法,用于构建这种Urysohn树。除了连续多元功能外,建议的算法还涵盖了具有量化输入的情况和量化和连续输入的组合。本文还包含在公共可用数据集上测试所建议的算法的多种结果,这些研究人员也用于基准测试。

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