Efficient computation and cue integration with noisy population codes
- 1 August 2001
- journal article
- research article
- Published by Springer Nature in Nature Neuroscience
- Vol. 4 (8) , 826-831
- https://doi.org/10.1038/90541
Abstract
The brain represents sensory and motor variables through the activity of large populations of neurons. It is not understood how the nervous system computes with these population codes, given that individual neurons are noisy and thus unreliable. We focus here on two general types of computation, function approximation and cue integration, as these are powerful enough to handle a range of tasks, including sensorimotor transformations, feature extraction in sensory systems and multisensory integration. We demonstrate that a particular class of neural networks, basis function networks with multidimensional attractors, can perform both types of computation optimally with noisy neurons. Moreover, neurons in the intermediate layers of our model show response properties similar to those observed in several multimodal cortical areas. Thus, basis function networks with multidimensional attractors may be used by the brain to compute efficiently with population codes.Keywords
This publication has 22 references indexed in Scilit:
- Computational approaches to sensorimotor transformationsNature Neuroscience, 2000
- Reading population codes: a neural implementation of ideal observersNature Neuroscience, 1999
- Spatial invariance of visual receptive fields in parietal cortex neuronsNature, 1997
- Spatial Transformations in the Parietal Cortex Using Basis FunctionsJournal of Cognitive Neuroscience, 1997
- Bayesian decision theory and psychophysicsPublished by Cambridge University Press (CUP) ,1996
- Recurrent Excitation in Neocortical CircuitsScience, 1995
- A Theory of How the Brain Might WorkCold Spring Harbor Symposia on Quantitative Biology, 1990
- Encoding of Spatial Location by Posterior Parietal NeuronsScience, 1985
- Receptive fields, binocular interaction and functional architecture in the cat's visual cortexThe Journal of Physiology, 1962
- Qualitative Depth Localization with Diplopic ImagesJournal of the Optical Society of America, 1956