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MAXENT 2012 : International Workshop on Bayesian Inference and Maximum Entropy Methods in Science and Engineering

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Link: http://www.ipp.mpg.de/ippcms/eng/for/veranstaltungen/konferenzen/maxent2012/index.html
 
When Jul 15, 2012 - Jul 20, 2012
Where Garching bei München, Germany
Submission Deadline May 1, 2012
Categories    machine learning
 

Call For Papers

32nd International Workshop on Bayesian Inference and Maximum Entropy Methods in Science and Engineering

15.07.-20.07.2012, IPP Garching bei München

Scope

Traditional topics of the workshop are the application of the maximum entropy principle and Bayesian methods for statistical inference to diverse areas of scientific research. Practical numerical algorithms and principles for solving ill-posed inverse problems, image reconstruction and model building are emphasised. The workshop also addresses common foundations for statistical physics, statistical inference, and information theory.

Important Deadlines

Abstract submission: 01.05.2012
Conference registration: 15.05.2012
Hotel reservation: 15.05.2012
Manuscript submission: 16.07.2012

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