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Information based explanation methods for deep learning agents-with applications on large open-source chess models.

Patrik Hammersborg1, Inga Strümke2

  • 1Department of Computer Science, Norwegian University of Science and Technology, Trondheim, Norway. patrik.hammersborg@ntnu.no.

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Summary
This summary is machine-generated.

Researchers re-implemented concept detection for chess AI using open-source models. A novel explainable AI (XAI) method provides guaranteed visual explanations for discrete input domains like chess.

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Area of Science:

  • Artificial Intelligence
  • Computer Science
  • Computational Game Theory

Background:

  • Large neural network models like AlphaZero achieve state-of-the-art performance in computer chess.
  • Challenges include explaining the internal knowledge of these models and their lack of open availability.
  • Existing explainable AI (XAI) methods may not provide exhaustive or exclusive information guarantees.

Purpose of the Study:

  • To re-implement the concept detection methodology applied to AlphaZero using open-source chess models.
  • To develop a novel XAI method for explaining AI models in discrete input spaces.
  • To provide strict guarantees on the information used by AI models during inference.

Main Methods:

  • Re-implementation of a concept detection methodology on large, open-source chess models with comparable performance to AlphaZero.
  • Development of a novel XAI method that controls information flow between input and model.
  • Application and demonstration of the XAI method on standard chess using open-source models.

Main Results:

  • Achieved results comparable to those obtained when applying the methodology to AlphaZero, using only open-source resources.
  • The novel XAI method generates visual explanations guaranteed to highlight exhaustively and exclusively the information used by the model.
  • Demonstrated the viability of the XAI method for explaining AI models in discrete input domains like chess.

Conclusions:

  • The re-implementation validates the concept detection methodology using accessible, open-source chess AI.
  • The novel XAI method offers a robust approach to understanding AI decision-making in discrete domains.
  • This work contributes to more transparent and explainable AI in complex strategic games.