Anders Lansner, Erik Fransén, and Anders Sandberg
Cell assembly dynamics in detailed and abstract attractor models of cortical
associative memory.
Theory in Biosciences 122 (2003) 19-36.
Abstract:
During the last few decades we have seen a convergence among ideas and hypotheses
regarding functional principles underlying human memory. Hebb's now more
than fifty years old conjecture concerning synaptic plasticity and cell assemblies,
formalized mathematically as attractor neural networks, has remained among
the most viable and productive theoretical frameworks. It suggests plausible
explanations for Gestalt aspects of active memory like perceptual completion,
reconstruction and rivalry.
We review the biological plausibility of these theories and discuss some
critical issues concerning their associative memory functionality in the
light of simulation studies of models with palimpsest memory properties.
The focus is on memory properties and dynamics of networks modularized in
terms of cortical minicolumns and hypercolumns. Biophysical compartmental
models demonstrate attractor dynamics that support cell assembly operations
with fast convergence and low firing rates. Using a scaling model we obtain
reasonable relative connection densities and amplitudes. An abstract attractor
network model reproduces systems level psychological phenomena seen in human
memory experiments as the Sternberg and von Restorff effects.
We conclude that there is today considerable substance in Hebb's theory of
cell assemblies and its attractor network formulations, and that they have
contributed to increasing our understanding of cortical associative memory
function. The criticism raised with regard to biological and psychological
plausibility as well as low storage capacity, slow retrieval etc has largely
been disproved. Rather, this paradigm has gained further support from new
experimental data as well as computational modeling.