Skip to main content

We’re sorry, something doesn't seem to be working properly.

Please try refreshing the page. If that doesn't work, please contact support so we can address the problem.

Log in

Information maintenance and statistical dependence reduction in simple neural networks

  • Published:
Biological Cybernetics Aims and scope Submit manuscript

Abstract

This study compares the ability of excitatory, feed-forward neural networks to construct good transformations on their inputs. The quality of such a transformation is judged by the minimization of two information measures: the information loss of the transformation and the statistical dependency of the output. The networks that are compared differ from each other in the parametric properties of their neurons and in their connectivity. The particular network parameters studied are output firing threshold, synaptic connectivity, and associative modification of connection weights. The network parameters that most directly affect firing levels are threshold and connectivity. Networks incorporating neurons with dynamic threshold adjustment produce better transformations. When firing threshold is optimized, sparser synaptic connectivity produces a better transformation than denser connectivity. Associative modification of synaptic weights confers only a slight advantage in the construction of optimal transformations. Additionally, our research shows that some environments are better suited than others for recoding. Specifically, input environments high in statistical dependence, i.e. those environments most in need of recoding, are more likely to undergo successful transformations.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Subscribe and save

Springer+ Basic
$34.99 /Month
  • Get 10 units per month
  • Download Article/Chapter or eBook
  • 1 Unit = 1 Article or 1 Chapter
  • Cancel anytime
Subscribe now

Buy Now

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  • Ambros-Ingerson J, Granger R, Lynch G (1990) Simulation of paleocortex performs hierarchial clustering. Science 247:1344–1348

    Google Scholar 

  • Ashby WR (1956) Design for an intelligence-amplifier. In: Shannon CE, McCarthy J (eds) Automata studies. Princeton University Press, Princeton, NJ, pp 215–234

    Google Scholar 

  • Atick JJ, Redlich AN (1990) Towards a theory of early visual processing. Neural Comput 2:308–320

    Google Scholar 

  • Barlow HB (1959) Sensory mechanisms, the reduction of redundancy, and intelligence. In: National Physical Laboratory Symposium No. 10, The mechanization of thought processes. Her Majesty's Stationary Office, London, pp 537–559

    Google Scholar 

  • Barlow HB, Földiák P (1989) Adaptation and decorrelation in the cortex. In: Durbin RM, Miall C, Mitchison GJ (eds) The computing neuron, chap 4, Addison-Wesley, Wokingham, pp 54–72

    Google Scholar 

  • Barlow HB, Kaushal TP, Mitchison GJ (1989) Finding minimum entropy codes. Neural Comput 1:412–423

    Google Scholar 

  • Bienenstock EL, Cooper LN, Munro PW (1982) Theory for the development of neuron selectivity: Orientation specificity and binocular interaction in visual cortex. J Neurosci 2:32–48

    Google Scholar 

  • Foldiak P (1990) Forming sparse representations by local anti-Hebbian learning. Biol Cybern 64:165–170

    Google Scholar 

  • Grossberg S (1976) Adaptive pattern classification and universal recoding: I. Parallel development and coding of neural feature detectors. Biol Cybern 23:121–134

    Google Scholar 

  • Hartline HK, Ratliff F (1957) Inhibitory interaction of receptor units in the eye of limulus. J Gen Physiol 40:357–376

    Google Scholar 

  • Levy WB (1985) An information/computation theory of hippocampal function. Society for Neurosci Abstr 11:493

    Google Scholar 

  • Levy WB (1989) A computational approach to hippocampal function. In: Hawkins RD, Bower GH (eds) Computational models of learning in simple neural systems. The psychology of learning and motivation, 23. Academic Press, San Diego, CA, pp 243–305

    Google Scholar 

  • Levy WB, Colbert CM (1991) Adaptive synaptogenesis can complement associative potentiation/depression. In: Commons ML (ed) Neural network models of conditioning: Quantitative analyses of behavior, 13. Lawrence Erlbaum Associates, Hillsdale, NJ, pp 53–68.

    Google Scholar 

  • Levy WB, Desmond NL (1985) The rules of elemental synaptic plasticity. In: Levy WB, Anderson J, Lehmkuhle S (eds) Synaptic modification, neuron selectivity and nervous system organization. Lawrence Erlbaum Associates, Hillsdale, NJ, pp 105–121

    Google Scholar 

  • Linsker R (1988) Self-organization in a perceptual network. Computer 21:105–117

    Google Scholar 

  • Miller KD, Keller JB, Stryker MP (1989) Ocular dominance column development: Analysis and simulation. Science 245:605–615

    Google Scholar 

  • Minsky M, Papert S (1969) Perceptrons. MIT Press, Cambridge, MA

    Google Scholar 

  • Moncastle VB (1957) Modality and topographic properties of single neurons of cat's somatic sensory cortex. J Gen Physiol 20:408–434

    Google Scholar 

  • Richards DSP, Levy WB (1990) Optimal preprocessing networks and a data processing theorem. International Joint Conference on Neural Networks 1:19–22

    Google Scholar 

  • Shannon CE, Weaver W (1949) The mathematical theory of communication. University of Illinois Press, Urbana, IL

    Google Scholar 

  • Srinivasan MV, Laughlin SB, Dibs A (1982) Predictive coding: a fresh view of inhibition in the retina. Proc R Soc Lond B 216:427–459

    Google Scholar 

  • Watanabe S (1969) Knowing and guessing. A quantitative study of inference and information. Wiley, New York, NY

    Google Scholar 

Download references

Author information

Authors and Affiliations

Authors

Rights and permissions

Reprints and permissions

About this article

Cite this article

Adelsberger-Mangan, D.M., Levy, W.B. Information maintenance and statistical dependence reduction in simple neural networks. Biol. Cybern. 67, 469–477 (1992). https://doi.org/10.1007/BF00200991

Download citation

  • Received:

  • Accepted:

  • Issue Date:

  • DOI: https://doi.org/10.1007/BF00200991

Keywords