|
Keynote and
Invited Speakers |
|
|
|
|
|
|
|
|
Abstracts and
Speaker Biographies |
|
The Web - Early Visions,
Present Reality, The Grander Future |
|
Prof. John McCarthy |
Stanford University, USA |
|
Abstract |
--------- |
Features of today's Web environment were
advocated and predicted as
early as 1945 (Vannevar Bush) followed by McCarthy ,
J. C. R. Licklider, and Douglas Engelbart. |
|
Technology has also been important (the
stored program computer
itself), time-sharing, CRT displays and now flat panels, the
mouse,
the internet, the personal computer (with all its troubbles),
the Web,
and adequate search engines. |
|
We compare what was advocated and predicted
with the present
interactive environment. Some things came out better than
predicted,
and some things that were advocated have still not been
realized. |
|
Beyond what was predicted, there are still
more possibilities,
especially some involving artificial intelligence (e.g.
understanding
a confused user's state of mind), but also some involving
(mere)
hardware, e.g. the pocket computer with adequaate display
and input.
Some of the present problems are institutional - combining
making sure
that authors get paid with universal access to their works. |
|
Bio Sketch |
------------ |
John McCarthy is Professor of Computer
Science at Stanford University. He has been interested in
artificial intelligence since 1948 and coined the term in
1955. His main artificial intelligence research area has
been the formalization of common sense knowledge. He
invented the LISP programming language in 1958, developed
the concept of time-sharing in the late fifties and early
sixties, and has worked on proving that computer programs
meet their specifications since the early sixties. He
invented the circumscription method of non-monotonic
reasoning in 1978. |
|
His main research (1995) is formalizing
common sense knowledge and reasoning. His articles are on
John McCarthy's main web page (http://www-formal.stanford.edu/jmc/). |
|
McCarthy received the
A. M. Turing award of the Association for Computing
Machinery in 1971 and was elected President of the American
Association for Artificial Intelligence for 1983-84 and is a
Fellow of that organization. He received the first Research
Excellence Award of the International Joint Conference on
Artificial Intelligence in 1985, the Kyoto Prize of the
Inamori Foundation in November 1988, and the National Medal
of Science in 1990. He is a member of the American Academy
of Arts and Sciences, the National Academy of Engineering
and the National Academy of Sciences. He has received
honorary degree from Linkoping University in Sweden, the
Polytechnic University of Madrid, Colby College, Trinity
College, Dublin and Concordia University in Montreal,
Canada. He has been declared a Distinguished Alumnus by the
California Institute of Technology. |
|
Back to top |
-------------------------------------------------- |
Incentive-Compatible
Social Choice |
|
Prof. Boi B. Faltings |
Swiss Federal Institute of Technology,
Switzerland |
|
Abstract |
--------- |
Many situations present a social choice
problem where different self-interested agents have to agree
on joint, coordinated decisions. For example, power
companies have to agree on how to use the power grid, and
airlines have to agree on how to schedule takeoffs and
landings. |
|
Mechanisms for social choice are called
incentive-compatible when cooperative behavior is optimal
for all parties. The most well-known examples of
incentive-compatible mechanisms are auctions. However, the
party that receives the auction revenue has an incentive to
manipulate the outcome to increase the revenue. For example,
a power grid operator has an interest to reduce capacity and
drive up prices. |
|
I present a novel mechanism for social
choice that is incentive-compatible without generating a
payment surplus. I give several examples of applications
where it solves the social choice problem without unwanted
incentives, and provides significantly better overall
utility than any other known mechanism. |
|
Bio Sketch |
------------ |
Boi B. Faltings is the founder and
director of the Artificial Intelligence Laboratory, and a
full professor in the EPFL computer science department. His
research interest is in Artificial Intelligence, in
particular in constraint- and case-based reasoning and
applications in software agents. Besides teaching and
research at EPFL, Dr. Faltings serves the AI community as
member of several editorial boards (AI Journal, AI Magazine,
AI Communications, Constraints, and others) as well as by
regular participation on conference committees (IJCAI, AAAI,
ECAI, and others). He is a fellow of ECCAI, the European
Coordinating Committee for Artificial Intelligence. |
|
Dr. Faltings obtained his undergraduate
degree at the Swiss Federal Institute of Technology, Zurich
(ETH) in 1983 and a Ph.D. degree from the University of
Illinois, Urbana, in 1987. From 1987 to 1993, he has been
professeur extraordinaire at EPFL. Since 1993, he is full
professor and have served as head of the computer science
department from 1996-1998. He was visiting professor at NEC
research institute in 1996 and Stanford University in 2001.
He was a founder of Iconomic Systems, a company developing
innovative solutions for travel e-commerce. |
|
Back to top |
--------------------------------------- |
Applications of
Intelligent Agent Technology to The Grid |
|
Prof. Carl Kesselman |
University of Southern California, USA |
|
Abstract |
--------- |
Grids are a distributed computing
technology whose objective is to provide the basic
mechanisms for forming and operating dynamic distributed
collaborations, or virtual organizations as they are
sometimes called. While Grid infrastructure has focused on
such things as the means for discovering and monitoring
dynamic services, managing faults and failures, creating and
managing service level agreements, creating and enforcing
dynamic policy, to name a few -- to date, only limited
progress has been made on creating the higher level reactive
behaviors that would enable truly dynamic formation of
virtual organizations. What is needed are the basic
algorithms that enable independently operating entities to
interact with one another with partial knowledge and have
emerge a robust desirable behavior. This is exactly the
range of problems that are being addressed by intelligent
agent technologies. Hence, it seems likely that agent
technology will play an important role in the development of
the Grid as a pervasive infrastructure and the Grid offers
an exciting range of new applications for agents. In this
talk I will explore the relationship of intelligent agents
to the Grid and in particular focus on how agent technology
can be applied to some specific challenges faced by Grid
infrastructure and applications. |
|
Bio Sketch |
------------ |
Dr. Carl Kesselman is Fellow in the
Information Sciences Institute at the University of Southern
California. He is the Director of the Center for Grid
Technologies at the Information Sciences Institute and a
Research Associate Professor of Computer Science at the
University
of Southern California. He received a Ph.D. in Computer
Science from the University of California, Los Angeles, a
Master of Science degree in Electrical Engineering from the
University of Southern California, and Bachelors degrees in
Electrical Engineering and Computer Science from the
University at Buffalo. |
|
Dr. Kesselman's current research
interests are all aspects of Grid computing, including basic
infrastructure, security, resource management, high-level
services and Grid applications. He is the author of many
significant papers in the field. Together with Dr. Ian
Foster, he co-leads the Globus Project, one of the leading
Grid research projects. The Globus project has developed the
Globus Toolkit, the de facto standard for Grid computing. |
|
Dr. Kesselman received the 1997 Global
Information Infrastructure Next Generation Internet award,
the 2002 R&D 100 award, the 2002 R&D Editors choice award,
the Federal Laboratory Consortium (FLC) Award for Excellence
in Technology Transfer and the 2002 Ada Lovelace Medal from
the British Computing Society for significant contributions
to information technology. Along with his colleagues Ian
Foster and Steve Tuecke, he was named one of the top 10
innovators of 2002 by InfoWorld Magazine. In 2003, he and
Dr. Foster were named by MIT Technology Review as the
creators of one of the "10 technologies that will change the
world." |
|
Back to top |
---------------------------------- |
Scaling up Multi-Agent Systems
through Organizational Structuring |
|
Prof. Victor Lesser |
University of Massachusetts, USA |
|
Abstract |
--------- |
Over the last four years, I have been
working on the design of a
distributed sensor network for vehicle tracking using
adaptive radar
sensors. This effort has re-ignited my long-term interest in
the use
of organizational structuring for handling scaling issues in
multi-agent systems. In this lecture, I will first examine
how
organizational structuring was used in our design to reduce
the
computational and communication load involved in
coordinating agent
activities, and I will discuss experiments that indicate the
complex
set of issues that need to be considered in evaluating the
effectiveness of different organizational variants. I will
also
briefly illustrate how it is possible to model the
performance of
these variants analytically, and predict their performance.
I will
then present bottom-up techniques, based on negotiation, for
organizational instantiation and adaptation in a dynamic
environment. Finally, I will discuss some recent work on a
knowledge-based top-down approach for organizational design. |
|
Bio Sketch |
------------ |
Victor R. Lesser received his B.A. in
Mathematics from Cornell University in 1966, and the M.S.
and Ph.D. degrees in Computer Science from Stanford
University in 1969 and 1972, respectively. He then joined
CMU as member of the research faculty. Since 1977, he has
been a Professor of Computer Science at the University of
Massachusetts, Amherst. He is a founding fellow of AAAI and
is considered a leading researcher in the areas of
multi-agent systems (he is one of the founders of the
field), real-time AI, and blackboard systems (he was the
system architect for the Hearsay-II speech understanding
system which was the first blackboard system developed).
Professor Lesser has been very active in helping to organize
and promote the field of Multi-Agent Systems. He was General
Chairman of the First International Conference on
Multi-Agent Systems and was the founding president of the
International Foundation for Multi-Agent Systems. |
|
Back to top |
--------------------------------- |
Intelligent Workstation
Agents and Unstructured Workstation Data |
|
Prof. Tom M. Mitchell |
Carnegie Mellon University, USA |
|
Abstract |
--------- |
Many researchers envision a future of
intelligent, personalized agents
in their computer workstations. These agents could provide a
variety
of personalized assistance helping to manage email, schedule
meetings,
gather and summarize relevant information, track progress of
various
projects, etc. |
|
Perhaps the greatest barrier to creating
such intelligent agents is
that the data observable to such an agent is unstructured
and
difficult to automatically interpret -- it includes
unstructured
workstation files (text, images, and other formats), email,
calendar
entries, web accesses, etc. This talk will discuss current
research
toward such intelligent workstation agents, and in
particular toward
making this unstructured data understandable to computer
agents. This
research is being conducted as part of a multi-university
research
effort on intelligent personalized assistants. |
|
Bio Sketch |
------------ |
Tom M. Mitchell is the Fredkin Professor
of Computer Science at Carnegie Mellon University. His
research lies in the area of machine learning, data mining,
artificial intelligence, and information fusion. Mitchell is
author of the textbook "Machine Learning," Past President of
the American Association of Artificial Intelligence (AAAI),
and a member of the US National Research Council's Computer
Science and Telecommunications Board. In 2002 he received
the Debye Prize from the Edmund Hustinx Foundation for his
research in computer
science. Mitchell is the founding director of CMU's Center
for Automated Learning and Discovery, an interdisciplinary
research center specializing in statistical machine learning
and data mining, and the first institution to offer a Ph.D.
program specifically in this area. Mitchell's recent
research has focused on machine learning approaches to
analyzing human brain function based on fMRI data, and on
machine learning for intelligent personal assistants. |
|
Back to top |
---------------------------- |
Data Mining: Artificial
Intelligence in Data Analysis |
|
Prof. Xindong Wu |
University of Vermont, USA |
|
Abstract |
--------- |
Data mining is a fast-growing area. The
first Knowledge Discovery in Databases Workshop was held in
August 1989, in conjunction with the 1989 International
Joint Conference on Artificial Intelligence, and this
workshop series became the International Conference on
Knowledge Discovery and Data Mining (KDD) in 1995. In 2003,
there were a total of 15 data mining conferences, most of
which are listed at http://www.kdnuggets.com/meetings/meetings-2003-past.html. |
|
These 15 conferences do not include various
artificial intelligence (AI), statistics and database
conferences (and their workshops) that also solicited and
accepted data mining related papers, such as IJCAI, ICML,
ICTAI, COMPSTAT, AI & Statistics, SIGMOD, VLDB, ICDE, and
CIKM. |
|
Among various data mining conferences, KDD
and ICDM (the IEEE International Conference on Data Mining)
are arguably (or unarguably) the two premier ones in the
field. ICDM was established in 2000, sponsored by the IEEE
Computer Society, and had its first annual meeting in 2001. |
|
This talk will review the topics of
interest from ICDM from an AI perspective, and analyze
common topics in data mining and AI, including key AI ideas
that have been used in both data mining and machine
learning. We will also discuss two current research projects
on (1) user-centered agents for biological information
exploration on the Web, and (2) dynamic classifier selection
in dealing with streaming data. Both projects apply data
mining techniques for intelligent analysis of large volumes
of data. |
|
Bio Sketch |
------------ |
Xindong Wu is Professor and Chair of the
Department of Computer Science at the University of Vermont,
USA. He holds a PhD in Artificial Intelligence from the
University of Edinburgh, Britain. His research interests
include data mining, knowledge-based systems, and Web
information exploration. He has published extensively in
these areas in various journals and conferences, including
IEEE TKDE, TPAMI, ACM TOIS, IJCAI, AAAI, ICML, KDD, ICDM,
and WWW. |
|
Dr. Wu is the Executive Editor of
Knowledge and Information Systems (a peer-reviewed archival
journal published by Springer-Verlag), the founder and
current Steering Committee Chair of the IEEE International
Conference on Data Mining (ICDM), a Series Editor of the
Springer Book Series on Advanced Information and Knowledge
Processing (AI&KP), and the Chair of the IEEE Computer
Society Technical Committee on Computational Intelligence (TCCI). |
|
Back to top |
|