Next
Livestream will start soon!
Livestream has already ended.
Presentation has not been recorded yet!
  • title: ParK: Sound and Efficient Kernel Ridge Regression by Feature Space Partitions
      0:00 / 0:00
      • Report Issue
      • Settings
      • Playlists
      • Bookmarks
      • Subtitles Off
      • Playback rate
      • Quality
      • Settings
      • Debug information
      • Server sl-yoda-v3-stream-011-alpha.b-cdn.net
      • Subtitles size Medium
      • Bookmarks
      • Server
      • sl-yoda-v3-stream-011-alpha.b-cdn.net
      • sl-yoda-v3-stream-011-beta.b-cdn.net
      • 1150868944.rsc.cdn77.org
      • 1511650057.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
            ParK: Sound and Efficient Kernel Ridge Regression by Feature Space Partitions
            • Settings
            • Sync diff
            • Quality
            • Settings
            • Server
            • Quality
            • Server

            ParK: Sound and Efficient Kernel Ridge Regression by Feature Space Partitions

            Dec 6, 2021

            Speakers

            LC

            Luigi Carratino

            Speaker · 0 followers

            SV

            Stefano Vigogna

            Speaker · 0 followers

            DC

            Daniele Calandriello

            Speaker · 0 followers

            About

            We introduce ParK, a new large-scale solver for kernel ridge regression. Our approach combines partitioning with random projections and iterative optimization to reduce space and time complexity while provably maintaining the same statistical accuracy. In particular, constructing suitable partitions directly in the feature space rather than in the input space, we promote orthogonality between the local estimators, thus ensuring that key quantities such as local effective dimension and bias remai…

            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

            Implicit SVD for Graph Representation Learning
            11:07

            Implicit SVD for Graph Representation Learning

            Sami Abu-El-Haija, …

            N2
            N2
            NeurIPS 2021 3 years ago

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

            NeurWIN: Neural Whittle Index Network For Restless Bandits Via Deep RL
            14:51

            NeurWIN: Neural Whittle Index Network For Restless Bandits Via Deep RL

            Khaled Nakhleh, …

            N2
            N2
            NeurIPS 2021 3 years ago

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

            Densely connected normalizing flows
            06:29

            Densely connected normalizing flows

            Matej Grcić, …

            N2
            N2
            NeurIPS 2021 3 years ago

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

            Black Box Probabilistic Numerics
            11:17

            Black Box Probabilistic Numerics

            Onur Teymur, …

            N2
            N2
            NeurIPS 2021 3 years ago

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

            A Probabilistic State Space Model for Joint Inference from Differential Equations and Data
            03:54

            A Probabilistic State Space Model for Joint Inference from Differential Equations and Data

            Jonathan Schmidt, …

            N2
            N2
            NeurIPS 2021 3 years ago

            Total of 1 viewers voted for saving the presentation to eternal vault which is 0.1%

            A Highly-Efficient Group Elastic Net Algorithm with an Application to Function-On-Scalar Regression
            12:09

            A Highly-Efficient Group Elastic Net Algorithm with an Application to Function-On-Scalar Regression

            Tobia Boschi, …

            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