Active Learning
- đ¤ Speaker: Ferenc Huszar (Budapest University of Technology and Economics)
- đ Date & Time: Thursday 12 April 2012, 14:00 - 15:30
- đ Venue: Engineering Department, CBL Room 438
Abstract
This RCC is going to be about active learning. I will start by giving some motivating examples for where active learning can be useful in experimental sciences and in large-scale machine learning applications. I will draw a rough taxonomy of active learning methods, mentioning the difference between transductive and inductive active learning, loss-oriented vs. information theoretic approaches. I will introduce a simple toy model for linearly separable binary classification, and use it to illustrate the idea behind different approaches to information theoretic active learning. I will talk in detail about the methods proposed by Tong and Koller (2001), resulting in one of the most highly cited papers in machine learning, and contrast it with related methods based on as query by committee. I’m also going to touch upon relatively recent theoretical results by Steve Hanneke on the fast rates of convergence certain active learning methods can achieve.
Recommended reading http://jmlr.csail.mit.edu/papers/volume2/tong01a/tong01a.pdf http://www.stat.cmu.edu/~shanneke/docs/2009/active-rates-annals.pdf
Series This talk is part of the Machine Learning Reading Group @ CUED series.
Included in Lists
- All Talks (aka the CURE list)
- bld31
- Cambridge Centre for Data-Driven Discovery (C2D3)
- Cambridge Forum of Science and Humanities
- Cambridge Language Sciences
- Cambridge talks
- Cambridge University Engineering Department Talks
- Centre for Smart Infrastructure & Construction
- Chris Davis' list
- Computational Continuum Mechanics Group Seminars
- custom
- Engineering Department, CBL Room 438
- Featured lists
- Guy Emerson's list
- Hanchen DaDaDash
- Inference Group Journal Clubs
- Inference Group Summary
- Information Engineering Division seminar list
- Interested Talks
- Machine Learning Reading Group
- Machine Learning Reading Group @ CUED
- Machine Learning Summary
- ML
- ndk22's list
- ob366-ai4er
- Quantum Matter Journal Club
- Required lists for MLG
- rp587
- School of Technology
- Simon Baker's List
- TQS Journal Clubs
- Trust & Technology Initiative - interesting events
- yk373's list
- yk449
Note: Ex-directory lists are not shown.
![[Talks.cam]](/static/images/talkslogosmall.gif)


Thursday 12 April 2012, 14:00-15:30