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Understanding which machine learning models are interpretable is key. This study identifies specific complexity factors in decision set models that impact human interpretability, offering design principles for better AI.

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Area of Science:

  • Artificial Intelligence
  • Machine Learning
  • Human-Computer Interaction

Background:

  • Growing demand for interpretable machine learning (IML) systems.
  • Lack of clear understanding regarding factors contributing to model interpretability.
  • Decision sets as a specific class of logic-based models for IML.

Purpose of the Study:

  • To advance the understanding of factors influencing human interpretability in decision set models.
  • To identify specific types of complexity that significantly affect human performance in understanding models.
  • To provide insights for designing more interpretable machine learning systems.

Main Methods:

  • Controlled human-subject experiments conducted across two domains and three tasks.
  • Focus on human-simulatability as a measure of interpretability.
  • Analysis of complexity factors impacting user performance.

Main Results:

  • Identified specific complexity factors that disproportionately affect human performance in understanding decision sets.
  • Observed consistent trends in interpretability across different tasks and domains.
  • Demonstrated that certain complexity types are more detrimental to interpretability than others.

Conclusions:

  • Findings can guide the selection of regularizers in optimization to learn more interpretable models.
  • Results suggest the existence of universal design principles for interpretable machine learning.
  • Highlights the importance of human-simulatability in evaluating IML systems.