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Model-Free Counterfactual Subset Selection at Scale

12 February 2025
Minh Nguyen
Viet Hung Doan
Anh Tuan Nguyen
Jun Jo
Quoc Viet Hung Nguyen
    LRM
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Abstract

Ensuring transparency in AI decision-making requires interpretable explanations, particularly at the instance level. Counterfactual explanations are a powerful tool for this purpose, but existing techniques frequently depend on synthetic examples, introducing biases from unrealistic assumptions, flawed models, or skewed data. Many methods also assume full dataset availability, an impractical constraint in real-time environments where data flows continuously. In contrast, streaming explanations offer adaptive, real-time insights without requiring persistent storage of the entire dataset. This work introduces a scalable, model-free approach to selecting diverse and relevant counterfactual examples directly from observed data. Our algorithm operates efficiently in streaming settings, maintaining O(log⁡k)O(\log k)O(logk) update complexity per item while ensuring high-quality counterfactual selection. Empirical evaluations on both real-world and synthetic datasets demonstrate superior performance over baseline methods, with robust behavior even under adversarial conditions.

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@article{nguyen2025_2502.08326,
  title={ Model-Free Counterfactual Subset Selection at Scale },
  author={ Minh Hieu Nguyen and Viet Hung Doan and Anh Tuan Nguyen and Jun Jo and Quoc Viet Hung Nguyen },
  journal={arXiv preprint arXiv:2502.08326},
  year={ 2025 }
}
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