Published March 17, 2026 | Version v1
Conference paper Open

GLANCE: Global Actions in a Nutshell for Counterfactual Explainability

  • 1. Information Management Systems Institute, Athena Research Center
  • 2. ROR icon National Technical University of Athens
  • 3. ROR icon Max Planck Institute for Software Systems
  • 4. ROR icon Athena Research and Innovation Center In Information Communication & Knowledge Technologies
  • 5. ROR icon Université Libre de Bruxelles
  • 6. ROR icon Athens University of Economics and Business
  • 7. ROR icon National and Kapodistrian University of Athens

Description

The widespread deployment of machine learning systems in critical real-world decision-making applications has high-lighted the urgent need for counterfactual explainability methods that operate effectively. Global counterfactual explanations, expressed as actions to offer recourse, aim to provide succinct explanations and insights applicable to large population subgroups. High effectiveness, measured by the fraction of the population that is provided recourse, ensures that the actions benefit as many individuals as possible. Keeping the cost of actions low ensures the proposed recourse actions remain practical and actionable. Limiting the number of actions that provide global counterfactuals is essential to maximizing interpretability. The primary challenge, therefore, is to balance these trade-offs maximizing effectiveness, minimizing cost, while maintaining a small number of actions. We introduce GLANCE, a versatile and adaptive algorithm that employs a novel agglomerative approach, jointly considering both the feature space and the space of counterfactual actions, thereby accounting for the distribution of points in a way that aligns with the model’s structure. This design enables the careful balancing of the trade-offs among the three key objectives, with the size objective functioning as a tunable parameter to keep the actions few and easy to interpret. Our extensive experimental evaluation demonstrates that GLANCE consistently  hows greater robustness and performance compared to existing methods across various datasets and models.

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Additional details

Funding

European Commission
AI-DAPT - AI-Ops Framework for Automated, Intelligent and Reliable Data/AI Pipelines Lifecycle with Humans-in-the-Loop and Coupling of Hybrid Science-Guided and AI Models 101135826