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Coalitional Strategies for Efficient Individual Prediction Explanation

Author

Listed:
  • Gabriel Ferrettini

    (Université de Toulouse-Capitole, IRIT, (CNRS/UMR 5505))

  • Elodie Escriva

    (Kaduceo)

  • Julien Aligon

    (Université de Toulouse-Capitole, IRIT, (CNRS/UMR 5505))

  • Jean-Baptiste Excoffier

    (Kaduceo)

  • Chantal Soulé-Dupuy

    (Université de Toulouse-Capitole, IRIT, (CNRS/UMR 5505))

Abstract

As Machine Learning (ML) is now widely applied in many domains, in both research and industry, an understanding of what is happening inside the black box is becoming a growing demand, especially by non-experts of these models. Several approaches had thus been developed to provide clear insights of a model prediction for a particular observation but at the cost of long computation time or restrictive hypothesis that does not fully take into account interaction between attributes. This paper provides methods based on the detection of relevant groups of attributes -named coalitions- influencing a prediction and compares them with the literature. Our results show that these coalitional methods are more efficient than existing ones such as SHapley Additive exPlanation (SHAP). Computation time is shortened while preserving an acceptable accuracy of individual prediction explanations. Therefore, this enables wider practical use of explanation methods to increase trust between developed ML models, end-users, and whoever impacted by any decision where these models played a role.

Suggested Citation

  • Gabriel Ferrettini & Elodie Escriva & Julien Aligon & Jean-Baptiste Excoffier & Chantal Soulé-Dupuy, 2022. "Coalitional Strategies for Efficient Individual Prediction Explanation," Information Systems Frontiers, Springer, vol. 24(1), pages 49-75, February.
  • Handle: RePEc:spr:infosf:v:24:y:2022:i:1:d:10.1007_s10796-021-10141-9
    DOI: 10.1007/s10796-021-10141-9
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    References listed on IDEAS

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    1. Simon Meyer Lauritsen & Mads Kristensen & Mathias Vassard Olsen & Morten Skaarup Larsen & Katrine Meyer Lauritsen & Marianne Johansson Jørgensen & Jeppe Lange & Bo Thiesson, 2020. "Explainable artificial intelligence model to predict acute critical illness from electronic health records," Nature Communications, Nature, vol. 11(1), pages 1-11, December.
    2. Stan Lipovetsky & Michael Conklin, 2001. "Analysis of regression in game theory approach," Applied Stochastic Models in Business and Industry, John Wiley & Sons, vol. 17(4), pages 319-330, October.
    3. Sebastian Bach & Alexander Binder & Grégoire Montavon & Frederick Klauschen & Klaus-Robert Müller & Wojciech Samek, 2015. "On Pixel-Wise Explanations for Non-Linear Classifier Decisions by Layer-Wise Relevance Propagation," PLOS ONE, Public Library of Science, vol. 10(7), pages 1-46, July.
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    Cited by:

    1. Jérôme Darmont & Boris Novikov & Robert Wrembel & Ladjel Bellatreche, 2022. "Advances on Data Management and Information Systems," Information Systems Frontiers, Springer, vol. 24(1), pages 1-10, February.

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