DiscoverDepartment of StatisticsRecent Applications of Stein's Method in Machine Learning
Recent Applications of Stein's Method in Machine Learning

Recent Applications of Stein's Method in Machine Learning

Update: 2021-07-29
Share

Description

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.
Comments 
loading
In Channel
loading
00:00
00:00
x

0.5x

0.8x

1.0x

1.25x

1.5x

2.0x

3.0x

Sleep Timer

Off

End of Episode

5 Minutes

10 Minutes

15 Minutes

30 Minutes

45 Minutes

60 Minutes

120 Minutes

Recent Applications of Stein's Method in Machine Learning

Recent Applications of Stein's Method in Machine Learning

Qiang Liu