Joseph Paillard
This webpage is under construction.
PhD candidate @ Roche and Inria MIND.
I am a second-year PhD student supervised by Bertrand Thirion at Inria MIND and Denis Engemann at Roche. My research focuses on statistical machine learning methods for measuring and explaining the importance of variables in complex prediction problems. My research is motivated by applications in clinical neuroscience, and in particular Alzheimer’s disease.
PhD project 🧠
Machine learning (AI) models are increasingly powerful at predicting from complex biomedical data, such as neuroimaging, proteomics, and genomics. In Alzheimer’s disease research, this translates to better diagnosis and tracking of disease progression. However, in critical healthcare applications, accurate prediction is not enough. It is necessary to understand what the model bases its prediction on and to uncover the underlying biology.
This is the problem my PhD focuses on: developing methods to explain what ML models are learning from complex neuroscience data. A central goal is to provide these explanations with rigorous statistical guarantees, a crucial requirement to control the risk of making false discoveries in clinical applications.
Open-source 🧑💻
Open-source software is essential for reproducible research and scientific collaboration. To support this effort, I contribute to developing and maintaining hidimstat, a library providing statistical methods to measure variable importance in prediction problems. It aims to provide a wide range of methods, covering classic baselines and recent advances, with examples illustrating how to apply them in different contexts.
news
| Feb 27, 2026 | I created this webpage. |
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