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Genetic programming-based regression for temporal data

机译:基于遗传编程的时间数据回归

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摘要

Various machine learning techniques exist to perform regression on temporal data with concept drift occurring. However, there are numerous nonstationary environments where these techniques may fail to either track or detect the changes. This study develops a genetic programming-based predictive model for temporal data with a numerical target that tracks changes in a dataset due to concept drift. When an environmental change is evident, the proposed algorithm reacts to the change by clustering the data and then inducing nonlinear models that describe generated clusters. Nonlinear models become terminal nodes of genetic programming model trees. Experiments were carried out using seven nonstationary datasets and the obtained results suggest that the proposed model yields high adaptation rates and accuracy to several types of concept drifts. Future work will consider strengthening the adaptation to concept drift and the fast implementation of genetic programming on GPUs to provide fast learning for high-speed temporal data.
机译:存在各种机器学习技术,以对概念漂移发生的时间数据进行回归。然而,有许多非间断环境,这些环境可能无法跟踪或检测变化。本研究开发了一种基于遗传编程的基于遗传编程的预测模型,其具有数值目标的时间数据,这些目标是由于概念漂移而跟踪数据集中的变化。当环境变化很明显时,所提出的算法通过聚类数据来对变化进行反应,然后诱导描述生成的集群的非线性模型。非线性模型成为遗传编程模型树的终端节点。使用七个非营养性数据集进行实验,并且获得的结果表明,所提出的模型产生高适应速率和准确性,以若干类型的概念漂移。未来的工作将考虑加强对概念漂移的适应性和在GPU上的基因编程的快速实施,为高速时间数据提供快速学习。

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