Path Integration and Cognitive Mapping in a Continuous Attractor Neural Network Model
Open Access
- 1 August 1997
- journal article
- review article
- Published by Society for Neuroscience in Journal of Neuroscience
- Vol. 17 (15) , 5900-5920
- https://doi.org/10.1523/jneurosci.17-15-05900.1997
Abstract
A minimal synaptic architecture is proposed for how the brain might perform path integration by computing the next internal representation of self-location from the current representation and from the perceived velocity of motion. In the model, a place-cell assembly called a “chart” contains a two-dimensional attractor set called an “attractor map” that can be used to represent coordinates in any arbitrary environment, once associative binding has occurred between chart locations and sensory inputs. In hippocampus, there are different spatial relations among place fields in different environments and behavioral contexts. Thus, the same units may participate in many charts, and it is shown that the number of uncorrelated charts that can be encoded in the same recurrent network is potentially quite large. According to this theory, the firing of a given place cell is primarily a cooperative effect of the activity of its neighbors on the currently active chart. Therefore, it is not particularly useful to think of place cells as encoding any particular external object or event. Because of its recurrent connections, hippocampal field CA3 is proposed as a possible location for this “multichart” architecture; however, other implementations in anatomy would not invalidate the main concepts. The model is implemented numerically both as a network of integrate-and-fire units and as a “macroscopic” (with respect to the space of states) description of the system, based on a continuous approximation defined by a system of stochastic differential equations. It provides an explanation for a number of hitherto perplexing observations on hippocampal place fields, including doubling, vanishing, reshaping in distorted environments, acquiring directionality in a two-goal shuttling task, rapid formation in a novel environment, and slow rotation after disorientation. The model makes several new predictions about the expected properties of hippocampal place cells and other cells of the proposed network.Keywords
This publication has 84 references indexed in Scilit:
- Hippocampal synaptic enhancement and information storage within a distributed memory systemPublished by Elsevier ,2003
- Replay of Neuronal Firing Sequences in Rat Hippocampus During Sleep Following Spatial ExperienceScience, 1996
- Dynamics of the Hippocampal Ensemble Code for SpaceScience, 1993
- Phase relationship between hippocampal place units and the EEG theta rhythmHippocampus, 1993
- Experience‐dependent modifications of hippocampal place cell firingHippocampus, 1991
- Path integration in desert ants, Cataglyphis fortisProceedings of the National Academy of Sciences, 1988
- Landmark learning and visuo-spatial memories in gerbilsJournal of Comparative Physiology A, 1986
- The contributions of position, direction, and velocity to single unit activity in the hippocampus of freely-moving ratsExperimental Brain Research, 1983
- Dynamics of pattern formation in lateral-inhibition type neural fieldsBiological Cybernetics, 1977
- The hippocampus as a spatial map. Preliminary evidence from unit activity in the freely-moving ratBrain Research, 1971