2026 NeuroPSI - Chen Institute joint conference on Brain, Behavior & Beyond
New Horizons in Aging and Neurodegenerative Disease
Bayesian methods can provide full-predictive distributions and well-calibrated uncertainties in modern deep learning. The Bayesian approach is especially relevant in scientific and healthcare applications—where we wish to have reliable predictive distributions for decision making, and the facility to naturally incorporate domain expertise. With a Bayesian approach, we not only want to find a single point that optimizes a loss, but rather to integrate over a loss landscape to form a Bayesian model average. The geometric properties of the loss surface, rather than the specific locations of optima, therefore greatly influence the predictive distribution in a Bayesian procedure. By better understanding loss geometry, we can realize the significant benefits of Bayesian methods in modern deep learning, overcoming challenges of dimensionality. In this talk, I review work on Bayesian inference and loss geometry in modern deep learning, including challenges, new opportunities, and applications.
New Horizons in Aging and Neurodegenerative Disease
New Horizons in Aging and Neurodegenerative Diseases
Séminaire humanités et sciences sociales du CEA
Ce webinaire explore une question centrale : comment rendre l’interculturalité véritablement opér...
Compagnie BOOM - Zoé Grossot
This “Let’s Talk” is an EUGLOH masterclass aligned with the Council of Europe framework, boosting...