Accesso libero

Backpropagation generalized delta rule for the selective attention Sigma-if artificial neural network

   | 28 giu 2012
International Journal of Applied Mathematics and Computer Science's Cover Image
International Journal of Applied Mathematics and Computer Science
Analysis and Control of Spatiotemporal Dynamic Systems (special section, pp. 245 - 326), Dariusz Uciński and Józef Korbicz (Eds.)
INFORMAZIONI SU QUESTO ARTICOLO

Cita

Broadbent, D. (1982). Task combination and selective intake of information, Acta Psychologica 50(3): 253-290.10.1016/0001-6918(82)90043-9Search in Google Scholar

Desimone, R. and Duncan, J. (1995). Neural mechanisms of selective visual-attention, Annual Review of Neuroscience 18(1): 193-222.10.1146/annurev.ne.18.030195.0012057605061Search in Google Scholar

Duch, W. and Jankowski, N. (1999). Survey of neural transfer functions, Neural Computing Surveys 2(1): 163-212.Search in Google Scholar

Durbin, R. and Rumelhart, D. (1990). Product units: A computationally powerful and biologically plausible extension to backpropagation networks, Neural Computation 1(1): 133-142.10.1162/neco.1989.1.1.133Search in Google Scholar

Feldman, J. and Ballard, D. (1982). Connectionist models and their properties, Cognitive Science 6(3): 205-254.10.1207/s15516709cog0603_1Search in Google Scholar

Ferguene, F. and Toumi, F. F. (2009). Dynamic external force feedback loop control of a robot manipulator using a neural compensator—Application to the trajectory following in an unknown environment, International Journal of Applied Mathematics and Computer Science 19(1): 113-126, DOI: 10.2478/v10006-009-0011-9.10.2478/v10006-009-0011-9Search in Google Scholar

Fonseca, L., Jimenez, J., Leburton, J. and Martin, R. (1998). Self-consistent calculation of the electronic structure and electron-electron interaction in self-assembled InAs-GaAs quantum dot structures, Physical Review B 57(7): 4017-4026.10.1103/PhysRevB.57.4017Search in Google Scholar

Gupta, M. (2008). Correlative type higher-order neural units with applications, IEEE International Conference on Automation and Logistics, ICAL 2008, Qingdao, China, pp. 715-718.Search in Google Scholar

Hager, G. and Toyama, K. (1999). Incremental focus of attention for robust visual tracking, International Journal of Computer Vision 35(1): 45-63.10.1023/A:1008159011682Search in Google Scholar

Houghton, G. and Tipper, S. (1996). Inhibitory mechanisms of neural and cognitive control: Applications to selective attention and sequential action, Brain and Cognition 30(1): 20-43.10.1006/brcg.1996.00038811979Search in Google Scholar

Huk, M. (2004). The sigma-if neural network as a method of dynamic selection of decision subspaces for medical reasoning systems, Journal of Medical Informatics & Technologies 7(1): 65-73.Search in Google Scholar

Huk, M. (2006). Sigma-if neural network as a use of selective attention technique in classification and knowledge discovery problems solving, Annales UMCS Informatica AI 5(2): 121-131.Search in Google Scholar

Huk, M. (2009). Learning distributed selective attention strategies with the Sigma-if neural network, in M. Akbar and D. Hussain (Eds.), Advances in Computer Science and IT, In-Tech, Vukovar, pp. 209-232.10.5772/8089Search in Google Scholar

Indiveri, G. (2008). Neuromorphic VLSI models of selective attention: From single chip vision sensors to multi-chip systems, Sensors 8(9): 5352-5375.10.3390/s8095352370550827873818Search in Google Scholar

Korbicz, J., Obuchowicz, A. and Uciński, D. (1994). Unidirectional networks, in L. Bolc (Ed.), Artificial Neural Networks: Foundations and Applications, Akademicka Oficyna Wydawnicza PLJ, Warsaw, pp. 35-58.Search in Google Scholar

Körding, K. and König, P. (2001). Neurons with two sites of synaptic integration learn invariant representations, Neural Computation 13(12): 2823-2849.10.1162/089976601317098547Search in Google Scholar

Mel, B. (1990). The sigma-pi column: A model of associative learning in cerebral cortex, Technical report, CNS Memo 6, Computation and Neural Systems Program, California Institute of Technology, Pasadena, CA.Search in Google Scholar

Mel, B. (1992). The clusteron: Toward a simple abstraction for a complex neuron, in J. Moody, S. Hanson and R. Lippmann (Eds.), Advances in Neural Information Processing Systems, Vol. 4, Morgan Kaufmann, San Mateo, CA, pp. 35-42.Search in Google Scholar

Neville, R. and Eldridge, S. (2002). Transformations of sigmapi nets: Obtaining reflected functions by reflecting weight matrices, Neural Networks 15(3): 375-393.10.1016/S0893-6080(02)00023-0Search in Google Scholar

Niebur, E., Hsiao, S. and Johnson, K. (2002). Synchrony: A neuronal mechanism for attentional selection?, Current Opinion in Neurobiology 12(2): 190-194.10.1016/S0959-4388(02)00310-0Search in Google Scholar

Noh, T., Song, P. and Sievers, A. (1991). Self-consistency conditions for the effective-medium approximation in composite materials, Physical Review B 44(11): 5459-5464.10.1103/PhysRevB.44.5459Search in Google Scholar

Noton, D. and Stark, L. (1971). Scanpaths in saccadic eye movements while viewing and recognizing patterns, Vision Research 11(9): 929-942.10.1016/0042-6989(71)90213-6Search in Google Scholar

Olshausen, B., Anderson, C. and Van Essen, D. (1993). A neurobiological model of visual attention and invariant pattern recognition based on dynamic routing of information, The Journal of Neuroscience 13(11): 4700-4719.10.1523/JNEUROSCI.13-11-04700.1993Search in Google Scholar

Pedro, J. O. and Dahunsi, O. A. (2011). Neural network based feedback linearization control of a servo-hydraulic vehicle suspension system, International Journal of Applied Mathematics and Computer Science 21(1): 137-147, DOI: 10.2478/v10006-011-0010-5.10.2478/v10006-011-0010-5Search in Google Scholar

Raczkowski, D., Canning, A. and Wang, L. (2001). Thomas-fermi charge mixing for obtaining self-consistency in density functional calculations, Physical Review B 64(12): 121101-121105.10.1103/PhysRevB.64.121101Search in Google Scholar

Rumelhart, D., Hinton, G. and McClelland, J. (1986). A general framework for parallel distributed processing, in D. Rumelhart and J. McClelland (Eds.), Parallel Distributed Processing: Explorations in the Microstructure of Cognition: Foundations, Vol. 1, The MIT Press, Cambridge, MA, pp. 45-76.Search in Google Scholar

Stark, L., Privitera, C. and Azzariti, M. (2000). Locating regions-of-interest for the mars rover expedition, International Journal of Remote Sensing 21(17): 3327-3347.10.1080/014311600750019930Search in Google Scholar

Treisman, A. (1960). Contextual cues in selective listening, Quarterly Journal of Experimental Psychology 12(4): 242-248.10.1080/17470216008416732Search in Google Scholar

Tsotsos, J., Culhane, S. and Cutzu, F. (2001). From foundational principles to a hierarchical selection circuit for attention, in J. Braun, C. Koch and J. Davis (Eds.), Visual Attention and Cortical Circuits, MIT Press, Cambridge, MA, pp. 285-306.Search in Google Scholar

Vanrullen, R. and Koch, C. (2003). Visual selective behavior can be triggered by a feed-forward process, Journal of Cognitive Neuroscience 15(2): 209-217.10.1162/08989290332120814112676058Search in Google Scholar

Weber, C. and Wermter, S. (2007). A self-organizing map of sigma-pi units, Neurocomputing 70(13-15): 2552-2560.10.1016/j.neucom.2006.05.014Search in Google Scholar

ISSN:
1641-876X
Lingua:
Inglese
Frequenza di pubblicazione:
4 volte all'anno
Argomenti della rivista:
Mathematics, Applied Mathematics