Advanced Genetic Programming vs. State-of-the-Art AutoML in Imbalanced Binary Classification

Q1 Multidisciplinary
Franz Frank, F. Bação
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引用次数: 0

Abstract

The objective of this article is to provide a comparative analysis of two novel genetic programming (GP) techniques, differentiable Cartesian genetic programming for artificial neural networks (DCGPANN) and geometric semantic genetic programming (GSGP), with state-of-the-art automated machine learning (AutoML) tools, namely Auto-Keras, Auto-PyTorch and Auto-Sklearn. While all these techniques are compared to several baseline algorithms upon their introduction, research still lacks direct comparisons between them, especially of the GP approaches with state-of-the-art AutoML. This study intends to fill this gap in order to analyze the true potential of GP for AutoML. The performances of the different tools are assessed by applying them to 20 benchmark datasets of the imbalanced binary classification field, thus an area that is a frequent and challenging problem. The tools are compared across the four categories average performance, maximum performance, standard deviation within performance, and generalization ability, whereby the metrics F1-score, G-mean, and AUC are used for evaluation. The analysis finds that the GP techniques, while unable to completely outperform state-of-the-art AutoML, are indeed already a very competitive alternative. Therefore, these advanced GP tools prove that they are able to provide a new and promising approach for practitioners developing machine learning (ML) models. Doi: 10.28991/ESJ-2023-07-04-021 Full Text: PDF
不平衡二进制分类中的高级遗传编程与最先进的AutoML
本文的目的是比较分析两种新的遗传规划(GP)技术,即人工神经网络的可微笛卡尔遗传规划(DCGPANN)和几何语义遗传规划(GSGP),以及最先进的自动机器学习(AutoML)工具,即Auto-Keras, Auto-PyTorch和Auto-Sklearn。虽然所有这些技术在引入时都与几种基线算法进行了比较,但研究仍然缺乏它们之间的直接比较,特别是GP方法与最先进的AutoML之间的比较。本研究旨在填补这一空白,以分析GP在AutoML中的真正潜力。通过将不同工具应用于不平衡二值分类领域的20个基准数据集来评估它们的性能,这是一个经常出现且具有挑战性的问题。通过四个类别对这些工具进行比较,平均性能、最大性能、性能内的标准偏差和泛化能力,从而使用指标f1得分、g均值和AUC进行评估。分析发现,GP技术虽然不能完全超越最先进的AutoML,但确实已经是一个非常有竞争力的选择。因此,这些先进的GP工具证明它们能够为开发机器学习(ML)模型的从业者提供一种新的有前途的方法。Doi: 10.28991/ESJ-2023-07-04-021全文:PDF
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Emerging Science Journal
Emerging Science Journal Multidisciplinary-Multidisciplinary
CiteScore
5.40
自引率
0.00%
发文量
155
审稿时长
10 weeks
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