Deep Machines That Know When They Do not Know : Informatisches Kolloquium

Link:
  • https://lecture2go.uni-hamburg.de/l2go/-/get/v/24641
Autor/in:
Beteiligte Personen:
  • Regionales Rechenzentrum der Universität Hamburg/ MCC/ Lecture2Go
  • DL.MIN
Verlag/Körperschaft:
Universität Hamburg
Erscheinungsjahr:
2019
Medientyp:
Audiovisuell
Schlagwort:
  • Informatik
Beschreibung:
  • Our minds make inferences that appear to go far beyond standard machine learning. Whereas people can learn richer representations and use them for a wider range of learning tasks, machine learning algorithms have been mainly employed in a stand-alone context, constructing a single function from a table of training examples. In this talk, I shall touch upon a view on machine learning, called probabilistic programming, that can help capturing these human learning aspects by combining high-level programming languages and probabilistic machine learning — the high-level language helps reducing the cost of modelling and probabilities help quantifying when a machine does not know something. Since probabilistic inference remains intractable, existing approaches leverage deep learning for inference. Instead of “going down the full neural road,” I shall argue to use sum-product networks, a deep but tractable architecture for probability distributions. This can speed up inference in probabilistic programs, as I shall illustrate for unsupervised science understanding, and even pave the way towards automating density estimation, making machine learning accessible to a broader audience of non-experts. This talk is based on joint works with many people such as Carsten Binnig, Zoubin Ghahramani, Andreas Koch, Alejandro Molina, Sriraam Natarajan, Robert Peharz, Constantin Rothkopf, Thomas Schneider, Patrick Schramwoski, Xiaoting Shao, Karl Stelzner, Martin Trapp, Isabel Valera, Antonio Vergari, and Fabrizio Ventola.
Beziehungen:
URL https://lecture2go.uni-hamburg.de/l2go/-/get/l/5013
Lizenz:
  • CC-BY-NC-SA-3.0
Quellsystem:
Lecture2Go UHH

Interne Metadaten
Quelldatensatz
oai:lecture2go.uni-hamburg.de:24641