Information Technology Reference
In-Depth Information
In the future study, we are intending to design other methodologies to find out or
collect the subjective feeling factors, trying other dynamic cognitive models and also
incorporate the user's feedback into the objective feature space evaluation and subjec-
tive feeling evaluation to have an efficient and more accurate personalized decision
making model.
References
1. Doyle, J.: Prospects for the Preferences. Computational Intelligence 20(2), 111-136 (2004)
2. Holand, J.: Adaptation in Natural and Artificial Systems. In: An Introductory Analysis
with Applications to Biology,Control and Artificial Intelligence. University of Michigan
Press, Ann Harbor (1975)
3. Dorigo, M.: Ant colony system-a cooperative learning approach to the traveling salesman
problem. IEEE Transactions on Evolutionary Computation 1(1), 53-66 (1997)
4. Von Neumann, J.: Theory of games and economic behavior. Princeton University Press,
Princeton (1947)
5. Janis, I.L., Mann, L.: Decision making: a psychological analysis of conflict, chlice and
commitment. Free Press, New York (1977)
6. Kahneman, D., Tversky, A.: Prospect theory: an analysis of decision under risk. Econome-
trica 47, 263-291 (1979)
7. Machina, M.J.: Expected Utility analysis without the independence axiom. Econometrica,
277-323 (1982)
8. Wakker, P.P.: Additive representations of preferences. Kluwer Academic Publishers, Dor-
drecht (1989a)
9. Busemeyer, J.R., Townsend, J.T.: Decision Field Theory: A dynamic-cognitive aproach to
decision making in an uncertain environment. Psychological Review 100(3), 432-459
(1993)
10. Simon, T.W., Schuttet, J.E., Axelsson, J.R.C., Mitsuo, N.: Concept, methods and tools in
Sensory Engineering. Theoretical Issues in Ergonomics Science (5), 214-231 (2004)
11. Roe, R., Busemeyer, J.R., Townsend, J.T.: Multi-alternative decision filed theory:A dy-
namic connectionist model of decision making. Psychology Review 108, 370-392 (2001)
12. Nakanishi, Y.: Capturing preference into a function using interactions with a manual evo-
lutionary design aid system. Genetic Programming, 133-138 (1996)
13. Lee, J.-Y., Cho, S.-B.: Interactive genetic algorithm for content-based image retrieval. In:
Proceedings of Asia Fuzzy Systems Symposium, pp. 479-484 (1998)
14. Kim, H.-S., Cho, S.-B.: Application of interactive genetic algorithm to fashion design. En-
gineering Application of Artificial Intelligence 13, 635-644 (2000)
15. Li, J.Y.: A Web-based Intelligent Fashion Design System. Jounal of Donghua Universi-
ty 23(1), 36-41 (2006)
16. Wang, Y., Chen, Y., Chen, Z.-g.: The sensory research on the style of women's overcoats.
International Journal of Clothing Science and Technology 20(3), 174-183 (2008)
 
Search WWH ::




Custom Search