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Fokkema, H. J., de Heide, R., & van Erven, T. A. L. (2023). Attribution-based Explanations that Provide Recourse cannot be Robust. Journal of Machine Learning Research, 1-37. Article 23-0042.
2024
Fokkema, H. J., Garreau, D., & van Erven, T. A. L. (2024). The Risks of Recourse in Binary Classification. 1-20. Paper presented at Conference on Artificial Intelligence & Statistics, Valencia, Spain.
Fokkema, H. J., van der Hoeven, D., Lattimore, T., & Mayo, J. J. (2024). Online Newton Method for Bandit Convex Optimisation. Abstract from 37th Conference on Learning Theory , Edmonton, Canada.
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