Skip to content

Machine Learning (Theory)

Machine learning and learning theory research

Posted on 3/24/2012 by John Langford

David Waltz

has died. He lived a full life. I know him personally as a founder of the Center for Computational Learning Systems and the New York Machine Learning Symposium, both of which have sheltered and promoted the advancement of machine learning. I expect much of the New York area machine learning community will miss him, as well as many others around the world.

CategoriesAnnouncements, Machine Learning

Post navigation

Previous PostPrevious The Submodularity workshop and Lucca Professorship
Next PostNext ICML author feedback is open

Details

  • A modest proposal
  • How to Contribute a Post
  • Who? What? Why?
  • Why did my comment not appear?

 Subscribe

John on Twitter

Recent Comments

  • John Langford on An AI Miracle Malcontent
  • Nikos Karampatziakis on An AI Miracle Malcontent
  • Computer Science Junction on ICML 2021 Invited Speakers — ML for Science
  • Computer Science Junction on ALT Highlights – An Interview with Joelle Pineau
  • John Langford on What is the Right Response to Employer Misbehavior in Research?

Categories

  • Active (12)
  • AI (19)
  • Announcements (116)
  • applications (4)
  • Bayesian (18)
  • Boosting (1)
  • Code (17)
  • Competitions (24)
  • Computation (6)
  • Conferences (95)
  • Coronavirus (2)
  • CS (4)
  • Deep (5)
  • Definitions (11)
  • Economics (3)
  • Empirical (6)
  • Exploration (6)
  • Funding (23)
  • General (73)
  • generative (1)
  • Graduates (2)
  • Information Theory (4)
  • Interactive (5)
  • Language (12)
  • Machine Learning (328)
  • Mathematics (2)
  • MDL (1)
  • medical (1)
  • Meta (4)
  • Neuroscience (2)
  • Online (38)
  • Organization (16)
  • Papers (45)
  • parallel (1)
  • politics (1)
  • Prediction Theory (20)
  • Privacy (1)
  • Problem Design (2)
  • Problems (31)
  • Questions (3)
  • Reductions (32)
  • Reinforcement (30)
  • Research (54)
  • Reviewing (24)
  • Robots (2)
  • Semisupervised (4)
  • Solutions (5)
  • Statistics (6)
  • structured (7)
  • Supervised (15)
  • Teaching (18)
  • Theory (8)
  • Trees (2)
  • Universal Learning (5)
  • Unsupervised (7)
  • Vision (6)
  • Workshop (36)

ML Related

  • Gelman—SMCISS
  • ICML Paper Discussion
  • Inductio Ex Machina
  • KD Nuggets
  • Kernel Machines
  • Machine Learning Thoughts
  • MLOSS
  • Reinforcement Learning
  • SM, DM, & ML
  • Wikipedia: Machine Learning

Research

  • Computational Complexity
  • Computer Research Policy
  • Geomblog
  • Mathematics
  • Mathematics and Computation
  • Michael Nielsen
  • Oddhead
  • Quantum Algorithms
  • Quantum Pontiff

Meta

  • Register
  • Log in
  • Entries feed
  • Comments feed
  • WordPress.org