Optimal information storage in noisy synapses under resource constraints.

Lav R Varshney, Per Jesper Sjöström, Dmitri B Chklovskii
Author Information
  1. Lav R Varshney: Department of Electrical Engineering and Computer Science, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, USA.

Abstract

Experimental investigations have revealed that synapses possess interesting and, in some cases, unexpected properties. We propose a theoretical framework that accounts for three of these properties: typical central synapses are noisy, the distribution of synaptic weights among central synapses is wide, and synaptic connectivity between neurons is sparse. We also comment on the possibility that synaptic weights may vary in discrete steps. Our approach is based on maximizing information storage capacity of neural tissue under resource constraints. Based on previous experimental and theoretical work, we use volume as a limited resource and utilize the empirical relationship between volume and synaptic weight. Solutions of our constrained optimization problems are not only consistent with existing experimental measurements but also make nontrivial predictions.

Grants

  1. MH69838/NIMH NIH HHS

MeSH Term

Animals
Excitatory Postsynaptic Potentials
Information Storage and Retrieval
Memory
Models, Neurological
Synapses
Synaptic Transmission

Word Cloud

Created with Highcharts 10.0.0synapsessynapticresourcetheoreticalcentralnoisyweightsalsoinformationstorageconstraintsexperimentalvolumeExperimentalinvestigationsrevealedpossessinterestingcasesunexpectedpropertiesproposeframeworkaccountsthreeproperties:typicaldistributionamongwideconnectivityneuronssparsecommentpossibilitymayvarydiscretestepsapproachbasedmaximizingcapacityneuraltissueBasedpreviousworkuselimitedutilizeempiricalrelationshipweightSolutionsconstrainedoptimizationproblemsconsistentexistingmeasurementsmakenontrivialpredictionsOptimal

Similar Articles

Cited By