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TPOT-NN: augmenting tree-based automated machine learning with neural network estimators

机译:TPOT-NN:使用神经网络估算器增强基于树的自动化机器学习

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Automated machine learning (AutoML) and artificial neural networks (ANNs) have revolutionized the field of artificial intelligence by yielding incredibly high-performing models to solve a myriad of inductive learning tasks. In spite of their successes, little guidance exists on when to use one versus the other. Furthermore, relatively few tools exist that allow the integration of both AutoML and ANNs in the same analysis to yield results combining both of their strengths. Here, we present TPOT-NN-a new extension to the tree-based AutoML software TPOT-and use it to explore the behavior of automated machine learning augmented with neural network estimators (AutoML+NN), particularly when compared to non-NN AutoML in the context of simple binary classification on a number of public benchmark datasets. Our observations suggest that TPOT-NN is an effective tool that achieves greater classification accuracy than standard tree-based AutoML on some datasets, with no loss in accuracy on others. We also provide preliminary guidelines for performing AutoML+NN analyses, and recommend possible future directions for AutoML+NN methods research, especially in the context of TPOT.
机译:自动化机器学习(Automl)和人工神经网络(ANNS)通过产生令人难以置信的高性能模型来解决人工智能的领域,以解决无数的归纳学习任务。尽管他们取得了成功,但何时使用一个与另一个相反的指导。此外,存在相对较少的工具,其允许在相同的分析中允许Automl和Ann的集成,以产生它们的优点的结果。在这里,我们将TPOT-NN - 基于树的Automl软件TPOT提出了新的扩展 - 并使用它来探索自动化机器学习的行为,增强了神经网络估计(Automl + Nn),特别是与非NN Automl相比在许多公共基准数据集的简单二进制分类的上下文中。我们的观察结果表明,TPOT-NN是一种有效的工具,它比某些数据集上的标准树的自动化实现了更高的分类精度,对其他人的准确性没有损失。我们还提供初步指南用于执行Automl + NN分析,并为Automl + NN方法研究的未来方向推荐可能的,特别是在TPOT的背景下。

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