Information Technology Reference
In-Depth Information
5.
de Castro, L. N., Timmis, J.: An Artificial Immune Network for Multimodal Function Op
timization. Proc. Of the IEEE Congress on Evolutionary Computation (CEC' 2002), Vol.
1
. Honolulu, Hawaii (2002) 699-704
6.
Kelsey, J., Timmis, J.: Immune Inspired Somatic Contiguous Hypermutation for Function
Optimization. In: Cantu-Paz, E. et al. (eds.): Proc. of Genetic and Evolutionary Computa-
tion Conference (GECCO). Lecture Notes in Computer Science, Vol.
2723
. Springer Ber-
lin/Heidelberg (2003) 207-218
7.
Freschi, F.: Multi-Objective Artificial Immune System for Optimization in Electrical En-
gineering. PhD Thesis, Politecnico di Torino, Department of Electrical Engineering,
Torino, Italy (2006)
8.
Yoo, J., Hajela, P.: Immune Network Simulations in Multicriterion Design. Structural Op-
timization, Vol.
18
(1999) 85-94
9.
Cruz Cortes, N., Coello Coello, C. A.: Multiobjective Optimization Using Ideas from the
Clonal Selection Principle. In: Cantu-Paz, E. et al. (eds.): Genetic and Evolutionary Com-
putation (GECCO'2003). Lecture Notes in Computer Science, Vol.
2723
. Springer Ber-
lin/Heidelberg (2003) 158-170
10.
Coello Coello, C. A., Cruz Cortes, N.: Solving Multiobjective Optimization Problems Us-
ing an Artificial Immune System. Genetic Programming and Evolvable Machines, Vol.
6
,
No. 2. Springer Netherlands (2005) 163-190
11.
Wang, X. L., Mahfouf, M.: ACSAMO: An Adaptive Multiobjective Optimization Algo-
rithm using the Clonal Selection Principle. The First European Symposium on Nature-
inspired Smart Information Systems. Albufeira, Portugal (2005)
12.
Jiao, L. C., Gong, M. G., Shang, R. H.: Clonal Selection with Immune Dominance and
Anergy Based Multiobjective Optimization. In: Coello Coello, C. A. et al. (eds.): Proc. of
the Third International Conference on Evolutionary Multi-Criterion Optimization
(EMO'2005). Lecture Notes in Computer Science, Vol.
3410
. Springer Berlin/Heidelberg
(2005) 474-489
13.
Burnet, F. M.: The Clonal Selection Theory of Acquired Immunity. Cambridge at the Uni-
versity Press, UK (1959)
14.
Jerne, N. K.: Towards a Network Theory of the Immune System. Ann. Immunology (Inst.
Pasteur), Vol.
125C
(1974) 373-389
15.
Perelson, A. S.: Immune Network Theory. Immunological Review, Vol.
110
(1989) 5-36
16.
Deb, K.: Multi-Objective Optimization using Evolutionary Algorithms. Chichester, U.K.:
Wiley (2001)
17.
Goldberg, D. E.: Genetic Algorithms for Search, Optimization, and Machine Learning.
Reading, MA: Addison-Wesley (1989)
18.
de Castro, L. N., Von Zuben, F. J.: artificial Immune Systems: Part I-Basic Theory and
Applications. Technical Report, TR-DCA 02/00. School of Computing and Electrical En-
gineering, State University of Campinas, Brazil (1999)
19.
Farmer, J. D., Packard, N. H.: The Immune System, Adaptation, and Machine Learning.
Physica, Vol.
22D
. North-Holland, Amsterdam (1986) 187-204
20.
Smith, R. E., Dike, B. A., Stegmann, S. A.: Fitness Inheritance in Genetic Algorithms.
Proc. of ACM Symposiums on Applied Computing (ACM'95) (1995) 345-350
21.
Zitzer, E., Thiele, L.: An Evolutionary Algorithm for Multi-objective Optimization: The
Strength Pareto Approach. TIK-Report, No.
43
. Computer Engineering and Communica-
tion Networks Lab (TIK), Swiss Federal Institute of Technology, Switzerland (1998)