For your information, below the cfp of the LAMAS'05 workshop to be held at AAMAS'05 in Utrecht, the Netherlands.

More information on: http://lamas2005.luc.ac.be

best regards,

Karl Tuyls

~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
Karl Tuyls, Ph.D.
[EMAIL PROTECTED]
Theoretical Computer Science Group
University of Limburg (LUC)
3520 Diepenbeek, Belgium
http://alpha.luc.ac.be/~lucp1642/
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

Begin forwarded message:

 From: "Pieter Jan 't Hoen" <[EMAIL PROTECTED]>
 Date: Fri 14 Jan 2005 14:30:01 CET
 To: Karl Tuyls <[EMAIL PROTECTED]>
 Cc: [EMAIL PROTECTED], Connectionists@CS.CMU.EDU,
 [EMAIL PROTECTED], [EMAIL PROTECTED]
 Subject: CFP Learning and Adaption in MAS-LAMAS'05- a workshop of
 AAMAS'05


[We apologize if you receive multiple copies of this message]

 ____________________________________________________________

 -- CALL FOR PAPERS --
 -- Workshop on Learning and Adaptation in Multi-Agent Systems 2005
 (LAMAS) --
 -- To be held at AAMAS 2005, Utrecht University, the Netherlands --
 -- http://lamas2005.luc.ac.be --
 ____________________________________________________________

 Dear colleagues,

 you are invited to submit papers to the 1st Workshop  on
 Learning and Adaption in MAS (LAMAS 2005).

 LAMAS 2005 will be organized within the fourth International
 Conference on
 Autonomous Agents and Multi Agent Systems in Utrecht, the Netherlands.
 Prospective participants must also register for the AAMAS 2005
 conference. The
 number of participants is strictly limited.

 The goal of this workshop is to increase awareness and interest in
 adaptive
 agent research, encourage collaboration between ML experts and agent
 system
 experts, and give a representative overview of current research in the
 area of
 adaptive agents.

 Machine Learning techniques for single agent frameworks are well
 established.
 Agents operate in uncertain environments and must be able to learn and
 act
 autonomously. This task is however more complex when the agent
 interacts with
 other agents with potentially different capabilities and goals. The
 single
 agent case is structurally different from the multi agent case due to
 the
 added dimension of dynamic interactions between the adaptive agents.

 Multi-Agent Learning, i.e., the ability of the agents to learn how to
 co-operate and compete, becomes crucial in many domains. Adaptive
 Agents and
 Multi-Agent Systems (AAMAS) is an emerging multi-disciplinary area
 encompassing Computer Science, Software Engineering, Biology, as well
 as
 Cognitive and Social Sciences. A theoretical framework, in which
 rationality
 of learning and interacting agents can be understood, is still under
 development in MASs, although there have been promising first results.

 We invite contributions that cover on how an agent can learn using ML
 techniques to act individually, and/or to coordinate with one another
 towards
 individual or common goals. This is an open issue in real-time, noisy,
 collaborative and adversarial environments.

 We interpret ML techniques in a broad context. These can include the
 non
 exhaustive list of Reinforcement Learning, Genetic Algorithms, Neural
 Networks
 or Evolutionary Game Theoretic approaches to learning. Also of
 interest are
 models for coevolving agent populations. Key-applications, where these
 techniques can be applied, for example, consist of load balancing
 problems,
 traffic management, teamwork, trust, auctions, supply chains, etc.

 We consider three possible ways in which machine learning can be used
 to
 enhance the application of an Agent Based System:

 1. An agent can learn the preferences and changing priorities of
 associated
 users.
 2. An agent can learn about other agents in the environment in order to
 compete and/or cooperate with them. An agent can learn from other
 agents,
 taking advantage of their experiences and incorporating these into its
 own
 knowledge base. An agent can also learn almost selfishly and have
 limited
 communication with other agents.
 3. An agent can learn about other regularities in its environment.

 We would particularly welcome new insights into these problems from
 other
 related disciplines and thus would like to emphasize the
 inter-disciplinary
 nature of the workshop. Among others, papers of the following kind are
 welcome:
 1. Evaluation of the effectiveness of individual learning strategies
 (e.g.,
 case-based, explanation-based, inductive, reinforcement), or  multi
 strategy
 combinations.
 2. Characterization of learning and adaptation methods in terms of
 modeling
 power, communication abilities, knowledge requirement,  processing
 abilities
 of individual agents. For instance through  the use of Game Theoretic
 models.
 3. Developing learning and adaptation strategies, or reward
 structures, for
 environments with cooperative agents, selfish  agents, partially
 cooperative
 (will cooperate only if individual  goals are not sacrificed) and for
 environments that can contain  mixture of these types of agents.
 4. Analyzing convergence properties of existing algorithms and
 constructing
 algorithms that guarantee convergence and stability of  group behavior.
 5. Evaluating effects of knowledge acquisition mechanisms on
 responsiveness
 of agents or groups to changes in the agent  population in the
 environment.
 6. Learning to work as an effective team by taking advantage of
 complementary
 skills and resources.
 7. Agents learning via passive or non-intrusive observation of user
 behaviors
 or by mimicking other agents.
 8. Evolving agent behaviors or co-evolving multiple agents with
 similar/opposing interests.
 9. Investigation of teacher-student relationships between agents or
 between
 an agent and the associated user.
 10. Applications of learning agents including agents that learn to
 negotiate
 contracts, learning trustworthiness of other agents,  learn to detect
 security
 threats, etc.

 Those wishing to present should (electronically) submit a full-scale
 paper,
 not longer than 16 pages (references and figures included) to Karl
 Tuyls
 ([EMAIL PROTECTED]) or Katja Verbeeck (kaverbee(at)vub.ac.be).

 The deadline for submission of contribution is March 14th, 2005. All
 contributions will be reviewed and in case of acceptance published in
 the
 workshop proceedings of the AAMAS'05 conference. Authors should submit
 full
 papers electronically in PS or PDF format. In addition, authors should
 submit
 an ASCII abstract, with the following information: title of paper;
 names and
 affiliations of authors; name, email, snail mail, phone number, and
 fax number
 of primary contact; abstract. The same information should be included
 on the
 first page of submitted papers. Papers must be written in English,
 with a
 maximum length of 16 pages. Please format papers according to the
 LNCS/LNAI
 style, a  LaTex class is available at
 http://www.springeronline.com/sgw/cda/frontpage/0,10735,5-164-2-72376
 -0,00.html
 All correspondence will be with the specified primary contact.

 Post proceedings of selected and revised papers are to be published as
 a
 Springer Lecture Notes in Artificial Intelligence.
 ____________________________________________________________
 IMPORTANT DATES:

 Deadline for Submission of Contributions: March 14th, 2005

 Notification of Acceptance/Rejection: april 18th, 2005

 Camera Ready Copy of Papers: may 15th, 2005

 Workshop Date: 25th or 26th of July 2005, precise date to be announced.
 ____________________________________________________________


Furthermore, if you have any inquiry please do not hesitate to contact the organisers.

 ____________________________________________________________
 Organizing Committee:

 Karl Tuyls (Primary Contact)
 [EMAIL PROTECTED]
 LUC Theoretical Computer Science Group

 Pieter Jan 't Hoen
 [EMAIL PROTECTED]
 Evolutionary Systems and Applied Algorithmics

 Sandip Sen
 [EMAIL PROTECTED]
 Department of Mathematical and Computer Sciences

 Katja Verbeeck
 kaverbee(at)vub.ac.be
 Computational Modeling Lab
 ____________________________________________________________

 Program Committee:

 Stephane Airiau, Department of Mathematical & Computer Sciences, The
 University of Tulsa, USA
 Bikramjit Banerjee, Department of Computer Science, University of
 Tulane, USA
 Ana Lucia Bazzan, Institute of Informatics, Universidade Federal do
 Rio Grande do Sul, Brazil
 Sander Bohte, CWI, Evolutionary and Applied Algorithmics group, The
 Netherlands
 Michael Goodrich, Department of Computer Science, Brigham Young
 University, USA
 Daniel Kudenko, Department of Computer Science, University of York, UK
 Han La Poutre, CWI, Evolutionary and Applied Algorithmics group, The
 Netherlands
 Michael Littman, Rutgers University, Department of Computer Science,
 USA
 Peter McBurney, Biocomputing and Computational Biology Group,
 Liverpool, UK
 Ann Nowe, Computational Modeling Lab, Vrije Universiteit Brussel,
 Belgium
 Simon Parsons, Department of Computer and Information Science,
 Brooklyn College, New York, USA.
 Steve Phelps, Biocomputing and Computational Biology Group, Liverpool,
 UK
 Jan Ramon, KULeuven, DTAI group, Department of Computer Science,
 Belgium
 Peter Stone, Department of Computer Sciences, The University of Texas
 at Austin, USA
 Kagan Tumer, NASA Ames Research Lab, USA
 Danny Weyns, Agentwise research group, KULeuven, Belgium
 David Wolpert, NASA Ames Research Lab, USA
 ____________________________________________________________


Looking forward to meeting you all at LAMAS '05 and AAMAS '05.

 Katja, Karl, Pieter Jan, and Sandip.

 -- http://lamas2005.luc.ac.be --
 --






--Apple-Mail-1-707227701
Content-Transfer-Encoding: 7bit
Content-Type: text/enriched;
        charset=US-ASCII

For your information, below the cfp of the LAMAS'05 workshop to be
held at AAMAS'05

in Utrecht, the Netherlands.


More information on: http://lamas2005.luc.ac.be


best regards,


Karl Tuyls


~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~

Karl Tuyls, Ph.D.

[EMAIL PROTECTED]

Theoretical Computer Science Group

University of Limburg (LUC)

3520 Diepenbeek, Belgium

http://alpha.luc.ac.be/~lucp1642/

~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~


Begin forwarded message:


<excerpt><bold><color><param>0000,0000,0000</param>From: </color></bold>"Pieter Jan 't Hoen" <<[EMAIL PROTECTED]>

<bold><color><param>0000,0000,0000</param>Date: </color></bold>Fri 14
Jan 2005 14:30:01 CET

<bold><color><param>0000,0000,0000</param>To: </color></bold>Karl
Tuyls <<[EMAIL PROTECTED]>

<bold><color><param>0000,0000,0000</param>Cc:
</color></bold>[EMAIL PROTECTED], Connectionists@CS.CMU.EDU,
[EMAIL PROTECTED], [EMAIL PROTECTED]

<bold><color><param>0000,0000,0000</param>Subject: </color>CFP
Learning and Adaption in MAS-LAMAS'05- a workshop of AAMAS'05

</bold>


[We apologize if you receive multiple copies of this message]


____________________________________________________________


-- CALL FOR PAPERS --

-- Workshop on Learning and Adaptation in Multi-Agent Systems 2005
(LAMAS) --

-- To be held at AAMAS 2005, Utrecht University, the Netherlands --

-- http://lamas2005.luc.ac.be --

____________________________________________________________


Dear colleagues,


you are invited to submit papers to the 1st Workshop on

Learning and Adaption in MAS (LAMAS 2005).


LAMAS 2005 will be organized within the fourth International Conference on

Autonomous Agents and Multi Agent Systems in Utrecht, the Netherlands.

Prospective participants must also register for the AAMAS 2005
conference. The

number of participants is strictly limited.


The goal of this workshop is to increase awareness and interest in adaptive

agent research, encourage collaboration between ML experts and agent
system

experts, and give a representative overview of current research in the
area of

adaptive agents.


Machine Learning techniques for single agent frameworks are well established.

Agents operate in uncertain environments and must be able to learn and
act

autonomously. This task is however more complex when the agent
interacts with

other agents with potentially different capabilities and goals. The
single

agent case is structurally different from the multi agent case due to
the

added dimension of dynamic interactions between the adaptive agents.


Multi-Agent Learning, i.e., the ability of the agents to learn how to

co-operate and compete, becomes crucial in many domains. Adaptive
Agents and

Multi-Agent Systems (AAMAS) is an emerging multi-disciplinary area

encompassing Computer Science, Software Engineering, Biology, as well
as

Cognitive and Social Sciences. A theoretical framework, in which
rationality

of learning and interacting agents can be understood, is still under

development in MASs, although there have been promising first results.


We invite contributions that cover on how an agent can learn using ML

techniques to act individually, and/or to coordinate with one another
towards

individual or common goals. This is an open issue in real-time, noisy,

collaborative and adversarial environments.


We interpret ML techniques in a broad context. These can include the non

exhaustive list of Reinforcement Learning, Genetic Algorithms, Neural
Networks

or Evolutionary Game Theoretic approaches to learning. Also of
interest are

models for coevolving agent populations. Key-applications, where these

techniques can be applied, for example, consist of load balancing
problems,

traffic management, teamwork, trust, auctions, supply chains, etc.


We consider three possible ways in which machine learning can be used to

enhance the application of an Agent Based System:


1. An agent can learn the preferences and changing priorities of associated

users.

2. An agent can learn about other agents in the environment in order to

compete and/or cooperate with them. An agent can learn from other
agents,

taking advantage of their experiences and incorporating these into its
own

knowledge base. An agent can also learn almost selfishly and have
limited

communication with other agents.

3. An agent can learn about other regularities in its environment.


We would particularly welcome new insights into these problems from other

related disciplines and thus would like to emphasize the
inter-disciplinary

nature of the workshop. Among others, papers of the following kind are

welcome:

1. Evaluation of the effectiveness of individual learning strategies
(e.g.,

case-based, explanation-based, inductive, reinforcement), or  multi
strategy

combinations.

2. Characterization of learning and adaptation methods in terms of
modeling

power, communication abilities, knowledge requirement,  processing
abilities

of individual agents. For instance through  the use of Game Theoretic
models.

3. Developing learning and adaptation strategies, or reward
structures, for

environments with cooperative agents, selfish  agents, partially
cooperative

(will cooperate only if individual  goals are not sacrificed) and for

environments that can contain  mixture of these types of agents.

4. Analyzing convergence properties of existing algorithms and
constructing

algorithms that guarantee convergence and stability of  group behavior.

5. Evaluating effects of knowledge acquisition mechanisms on
responsiveness

of agents or groups to changes in the agent  population in the
environment.

6. Learning to work as an effective team by taking advantage of
complementary

skills and resources.

7. Agents learning via passive or non-intrusive observation of user
behaviors

or by mimicking other agents.

8. Evolving agent behaviors or co-evolving multiple agents with

similar/opposing interests.

9. Investigation of teacher-student relationships between agents or
between

an agent and the associated user.

10. Applications of learning agents including agents that learn to
negotiate

contracts, learning trustworthiness of other agents,  learn to detect
security

threats, etc.


Those wishing to present should (electronically) submit a full-scale paper,

not longer than 16 pages (references and figures included) to Karl
Tuyls

([EMAIL PROTECTED]) or Katja Verbeeck (kaverbee(at)vub.ac.be).


The deadline for submission of contribution is March 14th, 2005. All

contributions will be reviewed and in case of acceptance published in
the

workshop proceedings of the AAMAS'05 conference. Authors should submit
full

papers electronically in PS or PDF format. In addition, authors should
submit

an ASCII abstract, with the following information: title of paper;
names and

affiliations of authors; name, email, snail mail, phone number, and
fax number

of primary contact; abstract. The same information should be included
on the

first page of submitted papers. Papers must be written in English,
with a

maximum length of 16 pages. Please format papers according to the
LNCS/LNAI

style, a  LaTex class is available at

http://www.springeronline.com/sgw/cda/frontpage/0,10735,5-164-2-72376-0,00.html

All correspondence will be with the specified primary contact.


Post proceedings of selected and revised papers are to be published as a

Springer Lecture Notes in Artificial Intelligence.

____________________________________________________________

IMPORTANT DATES:


Deadline for Submission of Contributions: March 14th, 2005


Notification of Acceptance/Rejection: april 18th, 2005


Camera Ready Copy of Papers: may 15th, 2005


Workshop Date: 25th or 26th of July 2005, precise date to be announced.

____________________________________________________________



Furthermore, if you have any inquiry please do not hesitate to contact
the organisers.


____________________________________________________________

Organizing Committee:


Karl Tuyls (Primary Contact)

[EMAIL PROTECTED]

LUC Theoretical Computer Science Group


Pieter Jan 't Hoen

[EMAIL PROTECTED]

Evolutionary Systems and Applied Algorithmics


Sandip Sen

[EMAIL PROTECTED]

Department of Mathematical and Computer Sciences


Katja Verbeeck

kaverbee(at)vub.ac.be

Computational Modeling Lab

____________________________________________________________


Program Committee:


Stephane Airiau, Department of Mathematical & Computer Sciences, The University of Tulsa, USA

Bikramjit Banerjee, Department of Computer Science, University of
Tulane, USA

Ana Lucia Bazzan, Institute of Informatics, Universidade Federal do
Rio Grande do Sul, Brazil

Sander Bohte, CWI, Evolutionary and Applied Algorithmics group, The
Netherlands

Michael Goodrich, Department of Computer Science, Brigham Young
University, USA

Daniel Kudenko, Department of Computer Science, University of York, UK

Han La Poutre, CWI, Evolutionary and Applied Algorithmics group, The
Netherlands

Michael Littman, Rutgers University, Department of Computer Science,
USA

Peter McBurney, Biocomputing and Computational Biology Group,
Liverpool, UK

Ann Nowe, Computational Modeling Lab, Vrije Universiteit Brussel,
Belgium

Simon Parsons, Department of Computer and Information Science,
Brooklyn College, New York, USA.

Steve Phelps, Biocomputing and Computational Biology Group, Liverpool,
UK

Jan Ramon, KULeuven, DTAI group, Department of Computer Science,
Belgium

Peter Stone, Department of Computer Sciences, The University of Texas
at Austin, USA

Kagan Tumer, NASA Ames Research Lab, USA

Danny Weyns, Agentwise research group, KULeuven, Belgium

David Wolpert, NASA Ames Research Lab, USA

____________________________________________________________



Looking forward to meeting you all at LAMAS '05 and AAMAS '05.


Katja, Karl, Pieter Jan, and Sandip.


-- http://lamas2005.luc.ac.be --

--



</excerpt>




--Apple-Mail-1-707227701--

Reply via email to