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Unmasking Clever Hans predictors and assessing what machines really learn

Author

Listed:
  • Sebastian Lapuschkin

    (Fraunhofer Heinrich Hertz Institute)

  • Stephan Wäldchen

    (Technische Universität Berlin)

  • Alexander Binder

    (Singapore University of Technology and Design)

  • Grégoire Montavon

    (Technische Universität Berlin)

  • Wojciech Samek

    (Fraunhofer Heinrich Hertz Institute)

  • Klaus-Robert Müller

    (Technische Universität Berlin
    Korea University
    Max Planck Institut für Informatik)

Abstract

Current learning machines have successfully solved hard application problems, reaching high accuracy and displaying seemingly intelligent behavior. Here we apply recent techniques for explaining decisions of state-of-the-art learning machines and analyze various tasks from computer vision and arcade games. This showcases a spectrum of problem-solving behaviors ranging from naive and short-sighted, to well-informed and strategic. We observe that standard performance evaluation metrics can be oblivious to distinguishing these diverse problem solving behaviors. Furthermore, we propose our semi-automated Spectral Relevance Analysis that provides a practically effective way of characterizing and validating the behavior of nonlinear learning machines. This helps to assess whether a learned model indeed delivers reliably for the problem that it was conceived for. Furthermore, our work intends to add a voice of caution to the ongoing excitement about machine intelligence and pledges to evaluate and judge some of these recent successes in a more nuanced manner.

Suggested Citation

  • Sebastian Lapuschkin & Stephan Wäldchen & Alexander Binder & Grégoire Montavon & Wojciech Samek & Klaus-Robert Müller, 2019. "Unmasking Clever Hans predictors and assessing what machines really learn," Nature Communications, Nature, vol. 10(1), pages 1-8, December.
  • Handle: RePEc:nat:natcom:v:10:y:2019:i:1:d:10.1038_s41467-019-08987-4
    DOI: 10.1038/s41467-019-08987-4
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    2. Jerome Friedman & Trevor Hastie & Robert Tibshirani, 2020. "Discussion of “Prediction, Estimation, and Attribution” by Bradley Efron," International Statistical Review, International Statistical Institute, vol. 88(S1), pages 73-74, December.
    3. Minji Lee & Leandro R. D. Sanz & Alice Barra & Audrey Wolff & Jaakko O. Nieminen & Melanie Boly & Mario Rosanova & Silvia Casarotto & Olivier Bodart & Jitka Annen & Aurore Thibaut & Rajanikant Panda &, 2022. "Quantifying arousal and awareness in altered states of consciousness using interpretable deep learning," Nature Communications, Nature, vol. 13(1), pages 1-14, December.
    4. Wang, Fujin & Zhao, Zhibin & Zhai, Zhi & Shang, Zuogang & Yan, Ruqiang & Chen, Xuefeng, 2023. "Explainability-driven model improvement for SOH estimation of lithium-ion battery," Reliability Engineering and System Safety, Elsevier, vol. 232(C).
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    6. Christoph March, 2019. "The Behavioral Economics of Artificial Intelligence: Lessons from Experiments with Computer Players," CESifo Working Paper Series 7926, CESifo.
    7. Krzysztof Fiok & Farzad V Farahani & Waldemar Karwowski & Tareq Ahram, 2022. "Explainable artificial intelligence for education and training," The Journal of Defense Modeling and Simulation, , vol. 19(2), pages 133-144, April.
    8. Xun Li & Dongsheng Chen & Weipan Xu & Haohui Chen & Junjun Li & Fan Mo, 2023. "Explainable dimensionality reduction (XDR) to unbox AI ‘black box’ models: A study of AI perspectives on the ethnic styles of village dwellings," Palgrave Communications, Palgrave Macmillan, vol. 10(1), pages 1-13, December.
    9. Verhagen, Mark D., 2021. "Identifying and Improving Functional Form Complexity: A Machine Learning Framework," SocArXiv bka76, Center for Open Science.
    10. Shane Fox & James McDermott & Edelle Doherty & Ronan Cooney & Eoghan Clifford, 2022. "Application of Neural Networks and Regression Modelling to Enable Environmental Regulatory Compliance and Energy Optimisation in a Sequencing Batch Reactor," Sustainability, MDPI, vol. 14(7), pages 1-28, March.
    11. March, Christoph, 2021. "Strategic interactions between humans and artificial intelligence: Lessons from experiments with computer players," Journal of Economic Psychology, Elsevier, vol. 87(C).
    12. Oliver T. Unke & Stefan Chmiela & Michael Gastegger & Kristof T. Schütt & Huziel E. Sauceda & Klaus-Robert Müller, 2021. "SpookyNet: Learning force fields with electronic degrees of freedom and nonlocal effects," Nature Communications, Nature, vol. 12(1), pages 1-14, December.
    13. Diderich, Claude, 2023. "The Truth Behind Artificial Intelligence: Illustrated by Designing an Investment Advice Solution," Journal of Financial Transformation, Capco Institute, vol. 58, pages 116-125.
    14. Van Den Hauwe, Ludwig, 2023. "Why Machines Will Not Replace Entrepreneurs. On the Inevitable Limitations of Artificial Intelligence in Economic Life," MPRA Paper 118307, University Library of Munich, Germany.
    15. Martin Obschonka & David B. Audretsch, 2020. "Artificial intelligence and big data in entrepreneurship: a new era has begun," Small Business Economics, Springer, vol. 55(3), pages 529-539, October.

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