Next
Livestream will start soon!
Livestream has already ended.
Presentation has not been recorded yet!
  • title: Sampling with Trusthworthy Constraints: A Variational Gradient Framework
      0:00 / 0:00
      • Report Issue
      • Settings
      • Playlists
      • Bookmarks
      • Subtitles Off
      • Playback rate
      • Quality
      • Settings
      • Debug information
      • Server sl-yoda-v3-stream-012-alpha.b-cdn.net
      • Subtitles size Medium
      • Bookmarks
      • Server
      • sl-yoda-v3-stream-012-alpha.b-cdn.net
      • sl-yoda-v3-stream-012-beta.b-cdn.net
      • 1338956956.rsc.cdn77.org
      • 1656830687.rsc.cdn77.org
      • Subtitles
      • Off
      • English
      • Playback rate
      • Quality
      • Subtitles size
      • Large
      • Medium
      • Small
      • Mode
      • Video Slideshow
      • Audio Slideshow
      • Slideshow
      • Video
      My playlists
        Bookmarks
          00:00:00
            Sampling with Trusthworthy Constraints: A Variational Gradient Framework
            • Settings
            • Sync diff
            • Quality
            • Settings
            • Server
            • Quality
            • Server

            Sampling with Trusthworthy Constraints: A Variational Gradient Framework

            Dec 6, 2021

            Speakers

            XL

            Xingchao Liu

            Speaker · 0 followers

            XT

            Xin Tong

            Speaker · 0 followers

            QL

            Qiang Liu

            Speaker · 1 follower

            About

            Sampling-based inference and learning techniques, especially Bayesian inference, provide an essential approach to handle uncertainty in machine learning (ML). As these techniques are increasingly used in daily life, it becomes essential to safeguard the ML systems with various trustworthy-related constraints, such as fairness, safety, interpretability. Mathematically, enforcing these constraints in probabilistic inference can be cast into sampling from intractable distributions subject to genera…

            Organizer

            N2
            N2

            NeurIPS 2021

            Account · 1.9k followers

            About NeurIPS 2021

            Neural Information Processing Systems (NeurIPS) is a multi-track machine learning and computational neuroscience conference that includes invited talks, demonstrations, symposia and oral and poster presentations of refereed papers. Following the conference, there are workshops which provide a less formal setting.

            Like the format? Trust SlidesLive to capture your next event!

            Professional recording and live streaming, delivered globally.

            Sharing

            Recommended Videos

            Presentations on similar topic, category or speaker

            Demonstrations 4
            2:04:26

            Demonstrations 4

            N2
            N2
            NeurIPS 2021 3 years ago

            Total of 0 viewers voted for saving the presentation to eternal vault which is 0.0%

            A Family of Cognitively Realistic Parsing Environments for Deep Reinforcement Learning
            05:16

            A Family of Cognitively Realistic Parsing Environments for Deep Reinforcement Learning

            Adrian Brasoveanu, …

            N2
            N2
            NeurIPS 2021 3 years ago

            Total of 0 viewers voted for saving the presentation to eternal vault which is 0.0%

            Seeing the Future: Image-Based Risk Models
            47:51

            Seeing the Future: Image-Based Risk Models

            Regina Barzilay, …

            N2
            N2
            NeurIPS 2021 3 years ago

            Total of 0 viewers voted for saving the presentation to eternal vault which is 0.0%

            Good Classification Measures and How to Find Them
            13:26

            Good Classification Measures and How to Find Them

            Martijn Gösgens, …

            N2
            N2
            NeurIPS 2021 3 years ago

            Total of 0 viewers voted for saving the presentation to eternal vault which is 0.0%

            Efficient Decompositional Rule Extraction for Deep Neural Networks
            03:07

            Efficient Decompositional Rule Extraction for Deep Neural Networks

            Mateo Espinosa Zarlenga, …

            N2
            N2
            NeurIPS 2021 3 years ago

            Total of 0 viewers voted for saving the presentation to eternal vault which is 0.0%

            Unsupervised Learning of Energy Compositions Energy Concepts
            15:00

            Unsupervised Learning of Energy Compositions Energy Concepts

            Yilun Du, …

            N2
            N2
            NeurIPS 2021 3 years ago

            Total of 0 viewers voted for saving the presentation to eternal vault which is 0.0%

            Interested in talks like this? Follow NeurIPS 2021