Call for papers: Special session at WCCI 2014 "Learning and
optimization in
multi-criteria dynamic and uncertain environments"

 

MOTIVATION 

Many real-world environments have inherently multiple
criteria (or objectives) that can be aligned as well as conflicting,
resulting in complex Pareto fronts. To efficiently explore these complex
fronts, new exploration/exploitation techniques are needed. Inspiration
for such techniques can be found in multi-objective optimization.


Usually, the state of the system is changing in time, making the
environment dynamic. There are many interesting applications in the
field of engineering, i.e. automatic control, robotics, where one wants
to simultaneously fulfill different criteria using a number of
constraints or preferences. 

The task of an optimization algorithm in
multi-criteria environments is to learn a strategy that optimizes all
criteria at the same time or to find a good compromise solution. Thus,
learning in the multi-criteria framework can be considerable harder than
in the standard single objective framework. Currently, there are two
major, conceptually different, approaches dealing with dynamic
environments: i) Reinforcement Learning and ii) Evolutionary Algorithms.


Reinforcement learning is traditionally formalized within the Markov
Decision Process (MDP) framework. An agent takes actions in a stochastic
and possibly unknown environment, and moves between states in this
environment. After each action, the agent receives a reward signal in
order to develop a strategy that maximizes its long-term (cumulative)
reward. 

The approach of an Evolutionary Algorithms is to continuously
track the optimum in dynamic environments, or to find a robust solution
that operates optimally in the presence of uncertainties. This poses
serious challenges to conventional EAs that are not conceptually
designed to handle environmental changes. 

GOAL 

The main goal of this
special session is to start the process of unifying and streamlining
research on learning in dynamic and uncertain multi-criteria
environments which for time being seems to evolve independently and
disconnected in Reinforcement learning and Evolutionary Algorithms. We
want to bring together researchers from machine learning, optimization
and artificial intelligence, interested multi-criteria decision making
and/or multi-objective optimization in dynamic and uncertain
environments. We also encourage submissions related to multi-criteria
decision-making and/or multi-objective optimization in other areas such
as operation research, games and real-world applications. 

Ideally, the
special session will help researches with different background in
Machine Learning and Optimization to identify some common ground for
their work. 

TOPICS OF INTEREST 

Topics of interests include but are
not limited to 

· Multi-objective reinforcement learning 

·
Multi-objective optimization algorithms such as meta-heuristics,
evolutionary algorithms, etc. for dynamic and uncertain environments 

·
Theoretical results on the learnability in multi-objective dynamic and
uncertain environments 

· Novel algorithmic frameworks for
multi-objective environments 

· Multi-criteria aspects of robotics 

·
Multi-objective self-adapting systems 

· Multi-objective automatic
configuration systems 

· Multi-objective games 

· Multi-criteria
decision making in dynamic and uncertain environments 

· Real-world
applications in engineering, business, computer science, biological
sciences, scientific computation, etc. in Dynamic and Uncertain
Environments 

· Multi-criteria dynamic/reactive scheduling and planning


INFORMATION FOR AUTHORS
 This section is part of IEEE International
Joint Conference on Neural Network 2014 (IEEE IJCNN 2014) 

1)
Information on the format and templates for papers can be found here:

http://www.ieee-wcci2014.org/Paper%20Submission.htm [1]
 2) Papers
should be submitted via the IJCNN 2014 paper submission site:

http://ieee-cis.org/conferences/ijcnn2014/upload.php3 [2]
 3) Select the
Special Session name in the Main Research topic dropdown list
 4) Fill
out the input fields, upload the PDF file of your paper and finalize
your submission by the deadline of December 20, 2013 

ORGANIZERS 

Dr.
eng. MADALINA M. DRUGAN, 

Computational Modeling group, Artificial
Intelligence Lab of Computer Science Department, Vrije Universiteit
Brussels, Belgium 

e-mail: [email protected]

Prof. dr. ANN
NOWE, 

Computational Modeling group, Artificial Intelligence Lab of
Computer Science Department, Vrije Universiteit Brussels, Belgium


e-mail: [email protected]

IMPORTANT DATES 

Paper submission: 20
December, 2013 
 Decision: 15 March, 2014 
 Final paper submission: 15
April, 2014 
 Conference dates: 6-11 July, 2014 

Links:
------
[1]
http://www.ieee-wcci2014.org/Paper%20Submission.htm
[2]
http://ieee-cis.org/conferences/ijcnn2014/upload.php3
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