Information Technology Reference
In-Depth Information
4. Kinto, E., Del-Moral-Hernandez, E., Marcano-Cedeño, A., Ropero-Pelaez, J.: A
preliminary neural model for movement direction recognition based on biologi-
cally plausible plasticity rules. In: Proc. 2nd Int. Work-Conf. on the Interplay
between Natural and Artificial Computation, Lecture Notes in Computer Science,
pp. 628-636. Springer, Berlin (2007)
5. Chiappalone, M., Vato, A., Berdondini, L., Koudelka, M., Martinoia, S.: Network
Dynamics and Synchronous Activity in Cultured Cortical Neurons. Int J. Neural
Syst. 17(2), 87-103 (2007)
6. Ropero-Pelaez, J., Piqueira, J.R.: Biological clues for up-to-date artificial neurons.
In: Computational Intelligence for Engineering and Manufacturing, pp. 131-146.
Springer, Heidelberg (2007)
7. Bolle, D., Heylen, R.: Adaptive Thresholds for Neural Networks with Synaptic
Noise. Int J. Neural Syst. 17(4), 241-252 (2007)
8. Abraham, W.C.: Metaplasticity: tuning synapses and networks for plasticity. Na-
ture Reviews Neuroscience 9, 387-399 (2008), doi:10.1038/nrn2356.
9. Daoudal, G., Debanne, D.: Long-Term Plasticity of Intrinsic Excitability: Learning
Rules and Mechanisms. Learning & Memory. Nature Reviews Neuroscience 10,
456-465 (2003), doi:10.1101/lm.65303
10. Neves, G., Cooke, S.F., Bliss, T.V.: Synaptic plasticity, memory and the hippocam-
pus: a neural network approach to causality. Nature Rev. Neurosci. 9, 65-75 (2008),
doi:10.1038/nrn2303.
11. Hebb, D.O.: The Organization of Behavior. In: Mahwah, N.J. (ed.) Reedition of
the 1949 original (2002) ISBN-10: 0805843000, ISBN-13: 978-0805843002
12. Cudmore, R.H., Turrigiano, G.G.: Long-Term Potentiation of Intrinsic Excitabil-
ity in LV Visual Cortical Neurons. Journal Neurophysiology 92, 341-348 (2004),
doi:10.1152/jn.01059.2003.
13. Monteiro, J.L., Lobo-Netto, M., Andina, D., Pelaez, J.R.: Using Neural Networks
to Simulate the Alzheimer's Disease. In: Davis, C.G., Yeh, R.T. (eds.) Proc. World
Automation Congress, Hawaii, HI, USA, pp. 1-6 (2008) ISBN: 978-1-889335-38-4.
INSPEC Accession Number: 10411864
14. Shannon, C.E.: A mathematical theory of communication. The Bell System Tech-
nical Journal 27, 379-423 (1948)
15. Andina, D., Pham, D.T. (eds.): Computational Intelligence for Engineering and
Manufacturing. Springer, Heidelberg (2007)
16. Rucky, D.W., Rogers, S.K., Kabrisk, M., Oxley, M.E., Suter, B.W.: The multi-layer
perceptron as an approximation to a Bayes optimal discrimination function. IEEE
Transactions on Neural Networks 1, 296-298 (1990), doi:10.1109/72.80266.
17. Marcano-Cedeño,
A., Álvarez-Vellisco, A., Andina, D.: Artificial metaplas-
ticity
MLP
applied
to
image
classification.
In:
Proc.
7th
Int.
Conf.
on
Industrial
Informatics,
Cardiff,
United
Kingdom,
pp.
650-653
(2009),
doi:10.1109/INDIN.2009.5195879.
18. Marcano-Cedeño, A., Quintanilla-DomÍnguez, J., Andina, D.: Wood Defects
Classification Using Artificial Metaplasticity Neural Network. In: Proc. 35th
Annua Conf. on of the IEEE Industrial Electronics Society, Porto, Portugal,
pp. 3422-3427 (2009), doi:10.1109/IECON.2009.5415189
19. De Long, E., Clarke-Pearson, D.: Comparing the areas under two or more correlated
receiver operating characteristic curves: A nonparametric approach. Biometrics 44,
837-845 (1988)
20. Egan, J.: Signal Detection Theory and ROC analysis. In: Series in Cognition and
Perception, SAcademic Press, New York (1975)
Search WWH ::




Custom Search