AISTATS 2013 Call for Papers
Sixteenth International Conference on Artificial Intelligence and Statistics
April 29 - May 1, 2013, Scottsdale, AZ, USA 

Colocated with the Learning Workshop

AISTATS is an interdisciplinary gathering of researchers at the intersection of 
computer science, artificial intelligence, machine learning, statistics, and 
related areas. Since its inception in 1985, the primary goal of AISTATS has 
been to broaden research in these fields by promoting the exchange of ideas 
among them. We encourage the submission of all papers which are in keeping with 
this objective at http://www.aistats.org.

Papers will be selected via a rigorous double-blind peer-review process, 
including expanded author feedback. All accepted papers will be presented at 
the Conference as contributed talks or as posters. Highlights of the review 
process this year:

(a) There will be a primary and secondary member of the senior program 
committee in charge of a paper, with discussion triggers given the ratings and 
content of the reviews.

(b) Following the lead of ICML 2012, reviewers will be assigned to a paper 
using multiple mechanisms so that there is no "single point of failure": one by 
an automated mechanism, and one each by the primary and secondary members of 
the SPC.

(c) Following the lead of AISTATS 2011, a select but non-trivial set of papers 
will be designated as "notable papers". These will carry a preface in the 
proceedings by a member of the senior program committee, and will also be given 
greater visibility and discussion via social media.

(d) We are also working with certain journals to facilitate transfer of 
reviews+reviewer-names for the notable papers, should the authors choose to 
submit extended journal versions.

We hope these changes motivate authors to submit their most innovative work at 
the intersection of statistics and artificial intelligence to the conference.

Solicited topics include, but are not limited to:

* Models and estimation: graphical models, causality, Gaussian processes, 
approximate inference, kernel methods, nonparametric models, statistical and 
computational learning theory, manifolds and embedding, sparsity and compressed 
sensing, ...
* Classification, regression, density estimation, unsupervised and 
semi-supervised learning, clustering, topic models, ...
* Structured prediction, relational learning, logic and probability
* Reinforcement learning, planning, control
* Game theory, no-regret learning, multi-agent systems
* Algorithms and architectures for high-performance computation in AI and 
statistics
* Software for and applications of AI and statistics
For a more detailed list of keywords, see aistats.org/keywords.php.


Submission Requirements
_____________________

Electronic submission of papers is required.  Papers may be up to 8 
double-column pages in length, excluding references; formatting and submission 
information will be made available on the conference website at 
http://www.aistats.org/submit.php.

Submissions will be considered if they are received by 23:59, November 15th, 
2012, UTC.  See the conference website for additional important dates: 
http://www.aistats.org/dates.php.

All accepted papers will be presented at the Conference either as contributed 
talks or as posters, and will be published in the AISTATS Conference 
Proceedings.  Papers for talks and posters will be treated equally in 
publication.

Submitted manuscripts should not have been previously published in a journal or 
in the proceedings of a conference, and should not be under consideration for 
publication at another conference at any point during the AISTATS review 
process.  It is acceptable to have a substantially extended version of the 
submitted paper under consideration simultaneously for journal publication, so 
long as the journal version's planned publication date is in 2013 or later, the 
journal submission does not interfere with AISTATS's right to publish the 
paper, and the situation is clearly described at the time of AISTATS 
submission.  Please describe the situation in the appropriate box on the 
submission page (and do not include author information in the submission 
itself, to avoid accidental unblinding).

Program Chairs
______________

Carlos M. Carvalho, McCombs School of Business, and Division of Statistics and 
Scientific Computation, The University of Texas at Austin.
Pradeep Ravikumar, Department of Computer Science, and Division of Statistics 
and Scientific Computation, The University of Texas at Austin.

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