Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Preview
Unable to display preview. Download preview PDF.
References
Arthur, W B,(1994) Inductive Reasoning and Bounded Rationality(The El Farol Problem). Amer. Econ. Rev. Papers and Proceedings 84: 406
Beattie, P, Bishop, J (1998) Self-localisation in the SENARIO autonomous wheelchair. Journal of Intelligent and Robotic Systems 22: 255-267
Bishop, J M (1989) Anarchic Techniques for Pattern Classification. Chapter 5. PhD Thesis, University of Reading
Bishop, J (1989) Stochastic searching networks. In: 1st IEE Conf. ANNs, 329331 London
Bishop, J M, Torr, P (1992) The Stochastic Search Network. In: Lingard, R, Myers, D J, Nightingale, C Neural Networks for Images, Speech and Natural Language. Chapman and Hall, New York, 370387
Bonabeau, E, Dorigo, M, Theraulaz, G (2000) Inspiration for Optimization from Social Insect Behaviour. Nature 406: 3942
Branke, J (1999) Memory-enhanced evolutionary algorithms for dynamic optimization problems. In: Congress on Evolutionary Computation. Volume 3., IEEE 1875-1882
Branke, J, Kaußler, T, Schmidt, C, Schmeck, H (2000) A multi-population approach to dynamic optimization problems. In Parmee, I., ed.: Adaptive Computing in Design and Manufacture, Springer 299-308
Branke, J, Schmidt, C, Schmeck, H (2001) Efficient fitness estimation in noisy environments. In Spector, L., ed.: Genetic and Evolutionary Computation Conference, Morgan Kaufmann 243-250
Branke, J (2003) Evolutionary approaches to dynamic optimization problems-introduction and recent trends. In: Branke, J, ed. Proceedings of EvoDOP
Campbell, D (1974) Evolutionary epistemology. In Schilpp, P, ed. The Philosophy of Karl Popper. Open Court 413-463
Chadab, R, Rettenmeyer, C(1975) Mass Recruitment by Army Ants. Science 188:11241125
Christensen, S, Oppacher, F (2001) What can we learn from no free lunch? a first attempt to characterize the concept of a searchable function. In: Spector et al., L, ed. Genetic and Evolutionary Computation Conference, San Fransisco, Morgan Kaufmann 1219-1226
De Meyer, K (2000) Explorations in Stochastic Diffusion Search: Soft- and Hardware Implementations of Biologically Inspired Spiking Neuron Stochastic Diffusion Networks, Technical Report KDM/JMB/2000/1, University of Reading
De Meyer, K, Bishop, J M, Nasuto, S J (2002) Small-World Effects in Lattice Stochastic Diffusion Search, Proc ICANN2002 Madrid, Spain
De Meyer, K, Bishop, J M, Nasuto S J (2000) Attention through Self-Synchronisation in the Spiking Neuron Stochastic Diffusion Network. Consciousness and Cognition 9(2)
Deneuborg, J L, Pasteels, J M, Verhaeghe, J C (1983) Probabilistic Behaviour in Ants: a Strategy of Errors? Journal of Theoretical Biology 105:259271
Digalakis, J, Margaritis, K (2002) An experimental study of benchmarking functions for evolutionary algorithms. International Journal of Computer Mathemathics 79:403-416
Dorigo, M, Di Caro, G, Gambardella, L M (1999) Ant Algorithms for Discrete Optimization. Artificial Life 5(2):137172
Garey, M R, Johnson, D S (1979) Computers and Intractability: a guide to the theory of NP-completeness. W. H. Freeman
Goodman, L J, Fisher, R C (1991) The Behaviour and Physiology of Bees, CAB International, Oxon, UK
Grech-Cini, E, McKee, G (1993) Locating the mouth region in images of human faces. In: Schenker, P, ed. SPIE - The International Society for Optical Engineering, Sensor Fusion VI 2059, Massachusetts
Grech-Cini, E (1995) Locating Facial Features. PhD Thesis, University of Reading
Holldobler, B, Wilson, E O (1990) The Ants. Springer-Verlag
Hurley, S, Whitaker, R (2002) An agent based approach to site selection for wireless networks. In: ACM symposium on Applied Computing, Madrid, ACM Press
Jin, Y (2005) A comprehensive survey of fitness approximation in evolutionary computation. In: Soft Computing, 9:3-12.
El-Beltagy, M A, Keane, A J (2001) Evolutionary optimization for computationally expensive problems using Gaussian processes. In: Arabnia, H, ed. Proc. Int. Conf. on Artificial Intelligence’01, CSREA Press 708-714
Kennedy, J, Eberhart, R C (2001) Swarm Intelligence. Morgan Kaufmann
Krieger, M J B , Billeter, J-B, Keller, L (2000) Ant-like Task Allocation and Recruitment in Cooperative Robots. Nature 406:992995
Krink, T, Filipic, B, Fogel, G B, Thomsen, R (2004) Noisy Optimization Problems - A Particular Challenge for Differential Evolution? In: Proc. of 2004 Congress on Evolutionary Computation, IEEE Press 332-339
De Meyer, K (2003) Foundations of Stochastic Diffusion Search. PhD thesis, University of Reading
Mitchell, M (1998) An Introduction to Genetic Algorithms. The MIT Press
Moglich M, Maschwitz U, Holldobler B (1974) Tandem calling: a new kind of signal in ant communication. Science 186(4168):1046-7
Monmarch, N, Venturini, G, Slimane, M (2000) On How Pachycondyla Apicalis Ants Suggest a New Search Algorithm. Future Generation Computer Systems 16:937-946
Morrison, R W, DeJong, K A (1999) A test problem generator for non-stationary environments. In: Congress on Evolutionary Computation. Volume 3., IEEE 2047-2053
Nasuto, S J (1999) Resource Allocation Analysis of the Stochastic Diffusion Search. PhD Thesis, University of Reading
Nasuto, S J, Bishop, J M (1998) Neural Stochastic Diffusion Search Network - a Theoretical Solution to the Binding Problem. Proc. ASSC2, Bremen
Nasuto, S J, Dautenhahn, K, Bishop, J M (1999) Communication as an Emergent Methaphor for Neuronal Operation. Lect. Notes Art. Int. 1562:365380
Nasuto, S J, Bishop, J M (1999) Convergence Analysis of Stochastic Diffusion Search. Parallel Algorithms and Applications 14(2):89107
Nasuto, S J, Bishop, J M, Lauria, S (1998) Time Complexity of Stochastic Diffusion Search. Neural Computation (NC98), Vienna, Austria
Parsopoulos, K E, Vrahatis, M N, (2005) Unified Particle Swarm Optimization in Dynamic Environments, Lect. Notes Comp. Sci. 3449:590-599
Pratt, S C, Mallon, E B, Sumpter, D J T, Franks, N R (2000) Collective Decision- Making in a Small Society: How the Ant Leptothorax Alpipennis Chooses a Nest Site. Proc. of ANTS2000, Brussels, Belgium
Seeley, T D (1995) The Wisdom of the Hive. Harvard University Press
Whitley, D, Rana, S B, Dzubera, J, Mathias, K E (1996) Evaluating evolutionary algorithms. Artificial Intelligence 85:245-276
Author information
Authors and Affiliations
Rights and permissions
Copyright information
© 2006 Springer
About this chapter
Cite this chapter
De, M.K., Slawomir, N.J., Mark, B. (2006). Stochastic Diffusion Search: Partial Function Evaluation In Swarm Intelligence Dynamic Optimisation. In: Stigmergic Optimization. Studies in Computational Intelligence, vol 31. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-540-34690-6_8
Download citation
DOI: https://doi.org/10.1007/978-3-540-34690-6_8
Publisher Name: Springer, Berlin, Heidelberg
Print ISBN: 978-3-540-34689-0
Online ISBN: 978-3-540-34690-6
eBook Packages: EngineeringEngineering (R0)