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Asynchronous Evolution of Data Mining Workflow Schemes by Strongly Typed Genetic Programming

机译:强类型遗传规划的数据挖掘工作流方案的异步进化

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This paper describes an algorithm for the automated design of whole machine learning workflows, including preprocessing of the data and automatic creation of several types of ensembles. The algorithm is based on strongly typed genetic programming which ensures the validity of the workflows. The evolution of the individuals in the population is asynchronous in order to improve the utilization of computational resources. The approach is validated on four data sets from the UCI machine learning repository.
机译:本文介绍了一种用于整个机器学习工作流程的自动化设计的算法,包括数据的预处理和几种类型的合奏的自动创建。该算法基于强类型遗传程序设计,可确保工作流程的有效性。个体在种群中的演化是异步的,以提高计算资源的利用率。该方法在UCI机器学习存储库中的四个数据集上得到了验证。

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