{"id":407,"date":"2025-12-03T11:25:50","date_gmt":"2025-12-03T10:25:50","guid":{"rendered":"https:\/\/web.umons.ac.be\/fs-informatique\/?p=407"},"modified":"2025-12-03T11:28:22","modified_gmt":"2025-12-03T10:28:22","slug":"public-phd-defense-victor-dheur-distribution-free-and-calibrated-predictive-uncertainty-in-probabilistic-machine-learning","status":"publish","type":"post","link":"https:\/\/web.umons.ac.be\/fs-informatique\/2025\/12\/03\/public-phd-defense-victor-dheur-distribution-free-and-calibrated-predictive-uncertainty-in-probabilistic-machine-learning\/","title":{"rendered":"Public PhD defense Victor Dheur : Distribution-Free and Calibrated Predictive Uncertainty in Probabilistic Machine Learning"},"content":{"rendered":"
Title :<\/strong> Distribution-Free and Calibrated Predictive Uncertainty in Probabilistic Machine Learning<\/p>\n Abstract :<\/strong><\/p>\n Victor Dheur will hold his public PhD defense on Thursday 11 December 2025 at 17h. Instead of just asking an AI for a single answer, it is often safer to ask for probabilistic predictions such as a range of possibilities. Victor Dheur designed algorithms that ensure these predictions are both reliable and informative, helping decision-makers across diverse applications. His dissertation is supervised by Prof. Souhaib Ben Taieb and St\u00e9phane Dupont. <\/p>\n","protected":false},"author":130,"featured_media":409,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[41],"tags":[],"class_list":["post-407","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-phd-defense"],"yoast_head":"\n
Date : <\/strong>Thursday December 11, 2025 at 17h, Mirzakhani Room (De Vinci Building), Plaine de Nimy, Av. Maistriau 15, 7000 Mons<\/p>\n
In this thesis, we develop distribution-free regression methods to produce calibrated and sharp probabilistic predictions using neural network models. We consider both single-output and the less-explored multi-output regression settings. Specifically, we develop and study recalibration, regularization, and conformal prediction (CP) methods. The first adjusts predictions after model training, the second augments the training objective, and the last produces prediction sets with finite-sample coverage guarantees.<\/div>\n