Randomly connected networks have short temporal memory.

Edward Wallace, Hamid Reza Maei, Peter E Latham
Author Information
  1. Edward Wallace: Department of Biochemistry and Molecular Biophysics, University of Chicago, Chicago, IL 60637, USA. ewjwallace@gmail.com

Abstract

The brain is easily able to process and categorize complex time-varying signals. For example, the two sentences, "It is cold in London this time of year" and "It is hot in London this time of year," have different meanings, even though the words hot and cold appear several seconds before the ends of the two sentences. Any network that can tell these sentences apart must therefore have a long temporal memory. In other words, the current state of the network must depend on events that happened several seconds ago. This is a difficult task, as neurons are dominated by relatively short time constants--tens to hundreds of milliseconds. Nevertheless, it was recently proposed that randomly connected networks could exhibit the long memories necessary for complex temporal processing. This is an attractive idea, both for its simplicity and because little tuning of recurrent synaptic weights is required. However, we show that when connectivity is high, as it is in the mammalian brain, randomly connected networks cannot exhibit temporal memory much longer than the time constants of their constituent neurons.

MeSH Term

Action Potentials
Brain
Humans
Linear Models
Memory, Long-Term
Memory, Short-Term
Models, Neurological
Nerve Net
Neural Networks, Computer
Neurons
Nonlinear Dynamics
Probability
Time Factors

Word Cloud

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