Artificial Neural Networks and Human Brain: Survey of Improvement Possibilities of Learning
DOI:
https://doi.org/10.17770/etr2015vol3.165Keywords:
Artificial Neural Networks, Brain Networks, Artificial Neural Network Learning AlgorithmsAbstract
There are numerous applications of Artificial Neural Networks (ANN) at the present time and there are different learning algorithms, topologies, hybrid methods etc. It is strongly believed that ANN is built using human brain’s functioning principles but still ANN is very primitive and tricky way for real problem solving. In the recent years modern neurophysiology advanced to a big extent in understanding human brain functions and structure, however, there is a lack of this knowledge application to real ANN learning algorithms. Each learning algorithm and each network topology should be carefully developed to solve more or less complex problem in real life. One may say that almost each serious application requires its own network topology, algorithm and data pre-processing. This article presents a survey of several ways to improve ANN learning possibilities according to human brain structure and functioning, especially one example of this concept – neuroplasticity – automatic adaptation of ANN topology to problem domain.
Downloads
References
M. A. Arbib, The Handbook of Brain Theory and Neural Networks. Cambridge MA: The MIT Press, 2003
G. Ascoli, Computational Neuroanatomy: Principles and Methods. Totowa, New Jersey: Humana Press, 2002.
T. Behrens, O. Sporns, “Human Connectomic,” Current Opinion in Neurobiology, Vol. 22, pp 144-153, 2012.
S. Boccaletti, V. Latora, Y. Moreno, M. Chavez, D.-U. Hwang, "Complex networks: Structure and dynamics," Physics Reports, vol. 424, pp. 175-308, Feb. 2006.
M. Gethsiyal Augasta, T. Kathirvalavakumar, „A Novel Pruning Algorithm for Optimizing Feedforward Neural Network of Classification Problem,” Neural Processing Letters, Vol. 34, pp 241-258, Dec. 2011.
M. Kaiser, “A tutorial in connectome analysis: Topological and spatial features of brain networks,” NeuroImage, Vol. 57, Issue 3, pp 892–907, Aug. 2011.
Y. Perwej, F. Parwej, “A Neuroplasticity (Brain Plasticity) Approach to Use in Artificial Neural Network,” International Journal of Scientific & Engineering Research, Vol. 3, Issue 6, pp 1-9, Jun. 2012.
M. Rubinov, O. Sporns, “Complex network measures of brain connectivity: Uses and interpretations,” NeuroImage, Vol. 52, Issue 3, pp 1059–1069, Sept. 2010.
O. Sporns, “From simple graphs to the connectome: Networks in neuroimaging,” NeuroImage, Vol. 62, pp 881-886, 2012.
O. Sporns, Networks of the Brain. Cambridge MA: The MIT Press, 2011.
C. J. Stam, E. C. W. Van Straaten, “The organization of physiological brain networks,” Clinical Neurophysiology, Vol. 123, pp 1067–1087, 2012.
R. Tadeusiewicz, R. Chaki, N. Chaki. Exploring Neural Networks with C#. New York: CRC Press, 2015.
X. Zeng, D. S. Yeung, “Hidden neuron pruning of multilayer perceptrons using a quantified sensitivity measure,” Neurocomputing, Vol.69, pp 825–837, 2006.