1 code implementation • 19 Jun 2024 • Xuehao Zhai, Junqi Jiang, Adam Dejl, Antonio Rago, Fangce Guo, Francesca Toni, Aruna Sivakumar
Urban land use inference is a critically important task that aids in city planning and policy-making.
no code implementations • 17 May 2024 • Francesco Leofante, Hamed Ayoobi, Adam Dejl, Gabriel Freedman, Deniz Gorur, Junqi Jiang, Guilherme Paulino-Passos, Antonio Rago, Anna Rapberger, Fabrizio Russo, Xiang Yin, Dekai Zhang, Francesca Toni
AI has become pervasive in recent years, but state-of-the-art approaches predominantly neglect the need for AI systems to be contestable.
1 code implementation • 21 Apr 2024 • Junqi Jiang, Francesco Leofante, Antonio Rago, Francesca Toni
Counterfactual Explanations (CEs) have emerged as a major paradigm in explainable AI research, providing recourse recommendations for users affected by the decisions of machine learning models.
no code implementations • 2 Feb 2024 • Junqi Jiang, Francesco Leofante, Antonio Rago, Francesca Toni
Counterfactual explanations (CEs) are advocated as being ideally suited to providing algorithmic recourse for subjects affected by the predictions of machine learning models.
1 code implementation • 22 Dec 2023 • Junqi Jiang, Antonio Rago, Francesco Leofante, Francesca Toni
Model Multiplicity (MM) arises when multiple, equally performing machine learning models can be trained to solve the same prediction task.
1 code implementation • 22 Sep 2023 • Junqi Jiang, Jianglin Lan, Francesco Leofante, Antonio Rago, Francesca Toni
In this work, we propose Provably RObust and PLAusible Counterfactual Explanations (PROPLACE), a method leveraging on robust optimisation techniques to address the aforementioned limitations in the literature.
1 code implementation • 31 Aug 2022 • Junqi Jiang, Francesco Leofante, Antonio Rago, Francesca Toni
Existing attempts towards solving this problem are heuristic, and the robustness to model changes of the resulting CFXs is evaluated with only a small number of retrained models, failing to provide exhaustive guarantees.