CALL FOR PAPERS

NIPS 2014 Workshop: Representation and Learning Methods for Complex Outputs
https://sites.google.com/site/complexoutputs2014

December 12 or 13, 2014
Montreal, Quebec, Canada

Learning problems that involve complex outputs are becoming increasingly 
prevalent in machine learning research.  For example, work on image and 
document tagging now considers thousands of labels chosen from an open 
vocabulary, with only partially labeled instances available for training.  
Given limited labeled data, these settings also create zero-shot learning 
problems with respect to omitted tags, leading to the challenge of inducing 
semantic label representations.  Furthermore, prediction targets are often 
abstractions that are difficult to predict from raw input data, but can be 
better predicted from learned latent representations.  Finally, when labels 
exhibit complex inter-relationships it is imperative to capture latent label 
relatedness to improve generalization. 

Although representation learning has already achieved state of the art results 
in standard settings, recent research has begun to explore the use of learned 
representations in more complex scenarios, such as structured output 
prediction, multiple modality co-embedding, multi-label prediction, and 
zero-shot learning.  These emerging research topics however have been conducted 
in separate sub-areas, without proper connections drawn between similar ideas, 
hence general methods and understanding have not yet emerged from the 
disconnected pursuits.  This workshop will bring together separate communities 
that have been working on novel representation and learning methods for 
problems with complex outputs. 

The aim of this workshop is to identify fundamental strategies, highlight 
differences, and identify the prospects for developing a set of systematic 
theory and methods for learning problems with complex outputs.  The target 
communities include researchers working on image tagging, document 
categorization, natural language processing, large vocabulary speech 
recognition, deep learning, latent variable modeling, and large scale 
multi-label learning.  Relevant topics include, but are not limited to, the 
following: 

* Multi-label learning with large and/or incomplete output spaces
* Zero-shot learning
* Co-embedding
* Learning output kernels
* Output structure learning

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Submission:
===========
We invite submissions in NIPS 2014 format with a maximum of 4 pages, excluding 
references.  Anonymity is not required.  Relevant works that have been recently 
published or presented elsewhere are allowed, provided that previous 
publications are explicitly acknowledged.  Please submit papers in PDF format 
at https://easychair.org/conferences/?conf=nipsrlco2014 . 

================
Important Dates:
================
Submission Deadline: October 10, 2014
Author Notification: October 26, 2014
Workshop: December 12 or 13, 2014

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Invited Speakers:
=================
[Confirmed] Hal Daume III, University of Maryland
[Confirmed] Francesco Dinuzzo, IBM Research, Dublin
[Tentative] Julia Hockenmaier, University of Illinois at Urbana-Champaign
[Confirmed] Honglak Lee, University of Michigan
[Tentative] Fei-Fei Li, Stanford University
[Tentative] Noah Smith, Carnegie Mellon University
[Tentative] Rich Sutton, University of Alberta
[Tentative] Jieping Ye, Arizona State University

===========
Organizers:
===========
Yuhong Guo, Temple University
Dale Schuurmans, University of Alberta
Kilian Q. Weinberger, Washington University 
Richard Zemel, University of Toronto

Contact:
The organizers can be contacted at [email protected].



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