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Position Paper: Bayesian Deep Learning in the Age of Large-Scale AI

Authors :
Papamarkou, Theodore
Skoularidou, Maria
Palla, Konstantina
Aitchison, Laurence
Arbel, Julyan
Dunson, David
Filippone, Maurizio
Fortuin, Vincent
Hennig, Philipp
Lobato, Jose Miguel Hernandez
Hubin, Aliaksandr
Immer, Alexander
Karaletsos, Theofanis
Khan, Mohammad Emtiyaz
Kristiadi, Agustinus
Li, Yingzhen
Mandt, Stephan
Nemeth, Christopher
Osborne, Michael A.
Rudner, Tim G. J.
RĂ¼gamer, David
Teh, Yee Whye
Welling, Max
Wilson, Andrew Gordon
Zhang, Ruqi
Publication Year :
2024

Abstract

In the current landscape of deep learning research, there is a predominant emphasis on achieving high predictive accuracy in supervised tasks involving large image and language datasets. However, a broader perspective reveals a multitude of overlooked metrics, tasks, and data types, such as uncertainty, active and continual learning, and scientific data, that demand attention. Bayesian deep learning (BDL) constitutes a promising avenue, offering advantages across these diverse settings. This paper posits that BDL can elevate the capabilities of deep learning. It revisits the strengths of BDL, acknowledges existing challenges, and highlights some exciting research avenues aimed at addressing these obstacles. Looking ahead, the discussion focuses on possible ways to combine large-scale foundation models with BDL to unlock their full potential.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.00809
Document Type :
Working Paper