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Data Mining Methods For Performance Evaluations To Asymptotic Numerical Models

机译:渐近数值模型性能评估的数据挖掘方法

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This paper proposed a new approach based on data mining to evaluate the e_ciency of numerical asymptotic models. Indeed, data mining has proved to be an e_cient tool of analysis in several domains. In this work, we first derive an asymptotic paraxial approximation to model ultrarelativistic particles. Then, we use data mining methods that directly deal with numerical results of simulations, to understand what each order of the asymptotic expansion brings to the simulation results. This new approach o_ers the possibility to understand, on the numerical results themselves, the precision level of a numercial asymptotic model.
机译:本文提出了一种基于数据挖掘的新方法来评估数值渐近模型的有效性。实际上,数据挖掘已被证明是在多个领域中进行分析的有效工具。在这项工作中,我们首先导出渐近近轴近似以对超相对论粒子进行建模。然后,我们使用数据挖掘方法直接处理模拟的数值结果,以了解渐近展开的每个阶数对模拟结果的影响。这种新方法使人们有可能根据数值结果本身来理解数值渐近模型的精确度。

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