Versions Compared

Key

  • This line was added.
  • This line was removed.
  • Formatting was changed.

This page is outdated. For more recent MLDG, please go to http://wiki.cs.cornell.edu/index.php?title=Machine_Learning_Discussion_Group

 

 

...

When and where do we meet?

This Fall Spring we will meet every Wednesday@4Friday@4:30pm in 5126 Upson.

Papers Read

...

00pm in 344 Gates Hall (Breakout room).

Papers Read

- Fall 2013

Date

Presenter

Topic(s)

Resources/Papers

Other activities/ comments

9/6/2013

Ruben

General ML

A Few Useful Things to Know about Machine Learning

 

9/20/2013

Karthik

Active Learning, Crowdsourcing

Tutorial style discussion.
Focus on Pairwise Ranking Aggregation in a Crowdsourced Setting

Paul Bennett (AI Seminar)

9/27/2013

Ashwin

Method of moments

A bit of background from
1) http://en.wikipedia.org/wiki/Method_of_moments_(statistics)
2) Chapter 7 of the following book.
Followed by freeform discussion on 
http://newport.eecs.uci.edu/anandkumar/pubs/AnandkumarEtal_mixtures12.pdf

 

10/4/2013

Adith

Distributed Representations

Freeform discussion. 
The Parallel Distributed Processing Approach to Semantic Cognition

 

10/18/2013

Hema

Vision

-

 

10/25/2013

Chenhao

Practice Talk

-

 

11/1/2013

Ashesh

Human-In-Loop Learning

Fine-Grained Crowd sourcing for Fine-Grained Recognition

 

11/15/2013

Stefano

 

 

 

11/22/2013

Yin

 

 

 

- Summer 2013

Date

Topic

Paper

Discussion Leader

7/18

Inverse Reinforcement Learning

Tutorial

Ashesh

7/11

Bayesian Nonparametrics

Dirichlet processes, its variants and applications

Yun

6/27

Deep Learning

Deep Learning (Examples, Thoughts and Ideas)

Moontae

6/13

Bioinformatics

Tutorial on Machine Learning problems in Bioinformatics and Genetics

Brad

6/6

Structured Learning

A Structural SVM Based Approach for Optimizing Partial AUC

Ruben

5/23

Deep Learning

Tutorial on Deep Learning

Ian

- Spring 2013

- Fall 2012

- Spring 2012

Date

Topic

Paper

Discussion Leader

4/6

Machine Learning and Game Theory

Machine Learning Markets

Karthik

...

- Fall 2011

Date

Topic

Paper

Discussion Leader

11/2

Deep Learning

Parsing Natural Scenes and Natural Language with Recursive Neural Networks

Abhishek & Ainur

 

10/19

Graphical Models

Spectral Algorithm for Latent Tree Graphical Models

Karthik

10/5

 

Trading Representability for Scalability: Adaptive Multi-Hyperplane Machine for Nonlinear Classification

Nikos

9/28

Submodularity

Submodularity tutorial

Ashwin

9/21

Graphical Models

Minimum Probability Flow Learning

Nikos

9/14

Submodularity

Submodular meets Spectral

Karthik

9/7

Deep-Learning, Graphical Models

Sum-Product Networks: A New Deep Architecture

Karthik

...

The group is mainly attended by graduate students. The senior organizers are Nikos, Ainur and Ruben SiposRuben and Karthik. Suggestions for topics or papers to discuss are always welcome.

...

Sign up to receive updates at our mailing list here.

Latest News

...