Simple models for reading neuronal population codes.
Open Access
- 15 November 1993
- journal article
- Published by Proceedings of the National Academy of Sciences in Proceedings of the National Academy of Sciences
- Vol. 90 (22) , 10749-10753
- https://doi.org/10.1073/pnas.90.22.10749
Abstract
In many neural systems, sensory information is distributed throughout a population of neurons. We study simple neural network models for extracting this information. The inputs to the networks are the stochastic responses of a population of sensory neurons tuned to directional stimuli. The performance of each network model in psychophysical tasks is compared with that of the optimal maximum likelihood procedure. As a model of direction estimation in two dimensions, we consider a linear network that computes a population vector. Its performance depends on the width of the population tuning curves and is maximal for width, which increases with the level of background activity. Although for narrowly tuned neurons the performance of the population vector is significantly inferior to that of maximum likelihood estimation, the difference between the two is small when the tuning is broad. For direction discrimination, we consider two models: a perceptron with fully adaptive weights and a network made by adding an adaptive second layer to the population vector network. We calculate the error rates of these networks after exhaustive training to a particular direction. By testing on the full range of possible directions, the extent of transfer of training to novel stimuli can be calculated. It is found that for threshold linear networks the transfer of perceptual learning is nonmonotonic. Although performance deteriorates away from the training stimulus, it peaks again at an intermediate angle. This nonmonotonicity provides an important psychophysical test of these models.Keywords
This publication has 14 references indexed in Scilit:
- Scaling laws in learning of classification tasksPhysical Review Letters, 1993
- The analysis of visual motion: a comparison of neuronal and psychophysical performanceJournal of Neuroscience, 1992
- Fast Perceptual Learning in Visual HyperacuityScience, 1992
- Population coding of stimulus orientation by striate cortical cellsBiological Cybernetics, 1990
- The influence of contextual stimuli on the orientation selectivity of cells in primary visual cortex of the catVision Research, 1990
- Published by Springer Nature ,1989
- Population coding of saccadic eye movements by neurons in the superior colliculusNature, 1988
- A theory for the use of visual orientation information which exploits the columnar structure of striate cortexBiological Cybernetics, 1988
- Direction-specific improvement in motion discriminationVision Research, 1987
- Neuronal Population Coding of Movement DirectionScience, 1986