基于进化神经树的时间序列预测

Byoung-Tak Zhang, Je-Gun Joung
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引用次数: 16

摘要

进化神经树是由进化算法构建的树状神经网络。我们使用ENTs来建立时间序列数据的预测模型。时间序列数据通常具有潜在过程的动态特征,因此预测的稳健性至关重要。我们描述了一种通过建立ent委员会(即CENTs)来进行更稳健预测的方法。该方法扩展了混合遗传规划(MGP)的概念,利用了进化计算产生多个模型作为输出的事实,而不是只有一个最好的模型。在激光时间序列上进行了实验,实验结果表明,cent的表现优于单一的最佳ent。我们还讨论了使用贝叶斯框架进行进化计算的理论基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time series prediction using committee machines of evolutionary neural trees
Evolutionary neural trees (ENTs) are tree-structured neural networks constructed by evolutionary algorithms. We use ENTs to build predictive models of time series data. Time series data are typically characterized by dynamics of the underlying process and thus the robustness of predictions is crucial. We describe a method for making more robust predictions by building committees of ENTs, i.e. CENTs. The method extends the concept of mixing genetic programming (MGP) which makes use of the fact that evolutionary computation produces multiple models as output instead of just one best. Experiments have been performed on the laser time series in which the CENTs outperformed the single best ENTs. We also discuss a theoretical foundation of CENTs using the Bayesian framework for evolutionary computation.
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