CALL FOR PAPERS
ECSQARU'2015 SPECIAL SESSION ON PROBABILISTIC GRAPHICAL MODELS FOR SCALABLE 
DATA ANALYTICS

DESCRIPTION AND TOPICS

Today, omnipresent sensors are continuously providing streaming data on the 
environments
in which they operate. For instance, a typical monitoring and analysis system 
may use 
streaming data generated by sensors to monitor the status of a particular 
device.
Analysis and monitoring systems should be designed to make predictions about 
the future 
behaviour of the device, or diagnostically infer the most likely system 
configuration 
that has produced the observed data. Sources of streaming data with even a 
modest 
updating frequency can produce extremely large volumes of data, thereby making 
efficient 
and accurate data analysis and prediction difficult. This calls for scalable 
data 
analytics. From the point of view of inference and learning from massive data 
streams, 
there have been advances consisting of scaling up existing methods for batch 
data as 
well as methods for adapting to the continuous arrival of new data. However, 
data stream 
processing is still a highly challenging problem. One of the main lines where 
research is 
needed is related to handling uncertainty in data, where principled methods and 
algorithms for dealing with uncertainty in massive data applications are 
required.

Probabilistic graphical models (PGMs) provide a well-founded and principled 
approach 
for performing inference and belief updating in complex domains endowed with 
uncertainty.

This special session welcomes contributions aimed at enabling PGMs as a key 
tool for 
scalable data analytics. We welcome theoretical and applied contributions 
related to 
the following topics:

•       Scalable PGM inference and learning.
•       Learning PGMs from data streams.
•       Inference and learning in Dynamic models.
•       Scalable algorithms for classification and regression based on PGMs.
•       Applications involving data streams.
•       Parallel / distributed algorithms.

Organizers

•       Helge Langseth. Norwegian University of Science and Technology 
(Trondheim, Norway).
•       Anders L. Madsen. Hugin Expert A/S and Aalborg University (Aalborg, 
Denmark).
•       Thomas D. Nielsen. Aalborg University (Aalborg, Denmark).
•       Antonio Salmerón. University of Almería (Almería, Spain).

The four organizers conform the Project Science Review Group of the EU-FP7 
project 
"AMIDST- Analysis of massive data streams" (http://www.amidst.eu 
<http://www.amidst.eu/>) that deals with
scalable algorithms based on PGMs. 

PAPER SUBMISSION

Papers to the special session should be submitted through the general paper 
submission 
website as regular submissions. During submission, authors submitting to the 
special
session should check the corresponding category. Papers submitted to the 
special session
will undergo the same review and decision process as regular papers.

The submission website is

https://ecsqaru2015.hds.utc.fr/submission/article/submission?lang=en 
<https://ecsqaru2015.hds.utc.fr/submission/article/submission?lang=en>

IMPORTANT DATES

Submission and decision dates are the same as regular submissions:

Conference Dates: July 15th-17th, 2015
Location: Compiègne, France
Submission deadline: February 6th, 2015
Notification: March 27th, 2015
Final version: April 24th, 2015

--
Antonio Salmerón
Data Analysis Group
Department of Mathematics
University of Almería (Spain)
http://www.ual.es/personal/asalmero <http://www.ual.es/personal/asalmero>
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