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Topic
Pointless learning (long version)
Resource type
Authors/contributors
- Clerc, Florence (Author)
- Danos, Vincent (Author)
- Dahlqvist, Fredrik (Author)
- Garnier, Ilias (Author)
Title
Pointless learning (long version)
Abstract
Bayesian inversion is at the heart of probabilistic programming and more generally machine learning. Understanding inversion is made difficult by the pointful (kernel-centric) point of view usually taken in the literature. We develop a pointless (kernel-free) approach to inversion. While doing so, we revisit some foundational objects of probability theory, unravel their category-theoretical underpinnings and show how pointless Bayesian inversion sits naturally at the centre of this construction .
Date
January 2017
Accessed
2019-11-24T12:02:56Z
Library Catalog
HAL Archives Ouvertes
Extra
ZSCC: 0000000
Notes
Accepted to the 20th International Conference on Foundations of Software Science and Computation Structures (FoSSaCS) (pre-proceedings version)
Citation
Clerc, F., Danos, V., Dahlqvist, F., & Garnier, I. (2017). Pointless learning (long version). Retrieved from https://hal.archives-ouvertes.fr/hal-01429663
PROBABILITY & STATISTICS
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