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ML interpretability: Simple isn't easy.

Tim Räz1

  • 1University of Bern, Institute of Philosophy, Länggassstrasse 49a, 3012 Bern, Switzerland.

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Summary
This summary is machine-generated.

This study clarifies machine learning (ML) model interpretability, examining why simple models like linear models are interpretable and how complex models retain some transparency. Understanding interpretability is key for trustworthy AI.

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Area of Science:

  • Artificial Intelligence
  • Philosophy of Science
  • Computer Science

Background:

  • The importance of machine learning (ML) model interpretability is widely acknowledged.
  • Current research often focuses on complex 'black-box' models like neural networks and methods for explainable AI (XAI).
  • A clear definition and understanding of interpretability across different model types remain elusive.

Purpose of the Study:

  • To clarify the fundamental nature of ML model interpretability.
  • To explore the spectrum of interpretability, focusing on highly interpretable models.
  • To analyze how varying degrees of interpretability are achieved in different ML models.

Main Methods:

  • Examination of inherently interpretable models (linear models, decision trees).
  • Analysis of models with partial interpretability (MARS, GAM).
  • Philosophical and conceptual analysis of interpretability.

Main Results:

  • Interpretability is not a monolithic concept; it varies across model types.
  • Factors contributing to the interpretability of simpler models are identified.
  • Methods for retaining interpretability in more complex models are explored.

Conclusions:

  • While methods for achieving interpretability differ, its nature can be clearly defined for specific ML models.
  • This work provides a clearer framework for understanding and evaluating ML interpretability.
  • Further research can build on this clarified understanding for more transparent and trustworthy AI systems.