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A semantic web architecture for advocate agents to determine preferences and facilitate decision making
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Source ACM International Conference Proceeding Series; Vol. 342 archive
Proceedings of the 10th international conference on Electronic commerce table of contents
Innsbruck, Austria
SESSION: BEA-2 table of contents
Article No. 10  
Year of Publication: 2008
ISBN:978-1-60558-075-3
Authors
Wolfgang Ketter  RSM Erasmus University, Rotterdam, the Netherlands
Arun Batchu  Eden Prairie
Gary Berosik  Thomson Reuters R&D, Eagan
Dan McCreary  Dan McCreary & Associates, St. Louis Park
Sponsor
SIGART: ACM Special Interest Group on Artificial Intelligence
Publisher
ACM  New York, NY, USA
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ABSTRACT

The world-wide-web (WWW) today consists of distinct, isolated islands of data and metadata. In the near future we expect the availability of a critical mass of data and metadata for use by intelligent agents that act on behalf of human users. These agents would identify, propose and capture new opportunities to assist human users in satisfying their goals, by traversing and acting on this semantically rich and abundant information. We envision a new class of agents, their networks and their communities that exist for the sole purpose of serving as their human "master's" Advocates - Advocate Agents. Advocate Agents learn a human's goals and preferences, collaborate with other agents, mine semantic content, identify new opportunities for action, propose them and finally transact them, while always keeping the human "in-the-loop." This paper discusses this class of distributed, intelligent, Advocate Agents, their potential uses, and proposed architectures and techniques that provide a conceptual framework for these networked agent societies to collaborate in the achievement of their human user's goals.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
1
Simon, H. A., Rational Decision Making in Business Organizations. The American Economic Review, 1979. 69(4): p. 493--513.
 
2
Gigerenzer, G. and P. M. Todd, Simple Heuristics That Make Us Smart. 1999: Oxford University Press.
3
 
4
 
5
6
 
7
 
8
Xiao, B. and I. Benbasat, Consumer Decision Support Systems for E-Commerce: Design and Adoption of Product Recommendation Agents. MIS Quarterly, 2007. 31(1): p. 317--209.
 
9
Adomavicius, G. and A. Tuzhilin, An Architecture of e-Butler: A Consumer-centric Online Personalization System. International Journal of Computational Intelligence and Applications, 2002. 2(3): p. 1--15.
 
10
Wellman, M. P., E. H. Durfee, and W. P. Birmigham, The digital library as a community of information agents. Expert, IEEE {see also IEEE Intelligent Systems and Their Applications}, 1996. 11(3).
 
11
Shneiderman, B., Direct manipulation: A step beyond programming languages. 1981.
 
12
Maes, P., Social interface agents: Acquiring competence by learning from users and other agents. Software Agents---Papers from the 1994 Spring Symposium, Technical Report SS-94-03, Etzioni, O., Ed, 1994a: p. 71--78.
 
13
 
14
Berners-Lee, T., J. Hendler, and O. Lassila, The Semantic Web. Scientific American Magazine 2001.
 
15
16
 
17
 
18
 
19
 
20
 
21
 
22
23
 
24
Hagel, J. and M. Singer, Net worth. 1999: Harvard Business School Press Boston.
 
25

Collaborative Colleagues:
Wolfgang Ketter: colleagues
Arun Batchu: colleagues
Gary Berosik: colleagues
Dan McCreary: colleagues