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Simpler is better: Lifting interpretability-performance trade-off via automated feature engineering

机译:更简单更好:通过自动特征工程提升可解释性 - 性能折衷

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摘要

Machine learning has proved to generate useful predictive models that can and should support decision makers in many areas. The availability of tools for AutoML makes it possible to quickly create an effective but complex predictive model. However, the complexity of such models is often a major obstacle in applications, especially in terms of high-stake decisions. We are experiencing a growing number of examples where the use of black boxes leads to decisions that are harmful, unfair or simply wrong. In this paper, we show that very often we can simplify complex models without compromising their performance; however, with the benefit of much needed transparency. We propose a framework that uses elastic black boxes as supervisor models to create simpler, less opaque, yet still accurate and interpretable glass box models. The new models were created using newly engineered features extracted with the help of a supervisor model. We supply the analysis using a large-scale benchmark on several tabular data sets from the OpenML database. There are tree main results of this paper: 1) we show that extracting information from complex models may improve the performance of simpler models, 2) we question a common myth that complex predictive models outperform simpler predictive models, 3) we present a real-life application of the proposed method.
机译:机器学习已经证明可以生成有用的预测模型,可以在许多地区支持决策者。 Automl工具的可用性使得可以快速创建一个有效而复杂的预测模型。然而,这些模型的复杂性通常是应用中的主要障碍,尤其是在高攸ALD决策方面。我们正在经历越来越多的例子,其中使用黑匣子导致有害,不公平或根本错误的决定。在本文中,我们展示了我们通常可以简化复杂模型,而不会影响其性能;但是,有很多所需的透明度。我们提出了一个框架,使用弹性黑匣子作为主管模型,以创造更简单,不透明,仍然准确,可解释的玻璃盒型号。使用在主管模型的帮助下提取的新工程化功能创建了新模型。我们在OpenML数据库中使用大型表格数据集上的大规模基准进行分析。有本文的树主要结果建议方法的寿命应用。

著录项

  • 来源
    《Decision support systems》 |2021年第11期|113556.1-113556.10|共10页
  • 作者单位

    Warsaw Univ Technol Fac Math & Informat Sci Koszykowa 75 PL-00662 Warsaw Poland;

    Warsaw Univ Technol Fac Math & Informat Sci Koszykowa 75 PL-00662 Warsaw Poland;

    Warsaw Univ Technol Fac Math & Informat Sci Koszykowa 75 PL-00662 Warsaw Poland|Univ Warsaw Fac Math Informat & Mech Warsaw Poland;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Interpretability; Machine learning; Feature engineering; Decision-making;

    机译:解释性;机器学习;特征工程;决策;

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