Skip to main content
Home

Main navigation

  • Home
  • Series
  • People
  • Depts & Colleges
  • Open Education

Main navigation

  • Home
  • Series
  • People
  • Depts & Colleges
  • Open Education

Recent Applications of Stein's Method in Machine Learning

Series
Department of Statistics
Video Audio Embed
Qiang Liu (University of Texas at Austin) gives the OxCSML Seminar on Friday 4th June 2021.
Abstract: Stein's method is a powerful technique for deriving fundamental theoretical results on approximating and bounding distances between probability measures, such as central limit theorem. Recently, it was found that the key ideas in Stein's method, despite being originally designed as a pure theoretical technique, can be repurposed to provide a basis for developing practical and scalable computational methods for learning and using large scale, intractable probabilistic models. This talk will give an overview for some of these recent advances of Stein's method in machine learning.

More in this series

View Series
Department of Statistics

Do Simpler Models Exist and How Can We Find Them?

Cynthia Rudin (Duke University) gives a OxCSML Seminar on Friday 14th May 2021.
Previous
Department of Statistics

Causality and Autoencoders in the Light of Drug Repurposing for COVID-19

Caroline Uhler (MIT), gives a OxCSML Seminar on Friday 2nd July 2021.
Next
Transcript Available

Episode Information

Series
Department of Statistics
People
Qiang Liu
Keywords
statistics
maths
machine learning
ai
Department: Department of Statistics
Date Added: 29/07/2021
Duration: 00:56:43

Subscribe

Apple Podcast Video Apple Podcast Audio Audio RSS Feed Video RSS Feed

Download

Download Video Download Audio Download Transcript

Footer

  • About
  • Accessibility
  • Contribute
  • Copyright
  • Contact
  • Privacy
'Oxford Podcasts' Twitter Account @oxfordpodcasts | MediaPub Publishing Portal for Oxford Podcast Contributors | Upcoming Talks in Oxford | © 2011-2022 The University of Oxford