Power-law forgetting in synapses with metaplasticity

نویسندگان

  • A. Mehta
  • J. M. Luck
چکیده

The idea of using metaplastic synapses to incorporate the separate storage of longand short-term memories via an array of hidden states was put forward in the cascade model of Fusi et al. In this paper, we devise and investigate two models of a metaplastic synapse based on these general principles. The main difference between the two models lies in their available mechanisms of decay, when a contrarian event occurs after the build-up of a long-term memory. In one case, this leads to the conversion of the long-term memory to a short-term memory of the opposite kind, while in the other, a long-term memory of the opposite kind may be generated as a result. Appropriately enough, the response of both models to short-term events is not affected by this difference in architecture. On the contrary, the transient response of both models, after long-term memories have been created by the passage of sustained signals, is rather different. The asymptotic behaviour of both models is, however, characterised by power-law forgetting with the same universal exponent. E-mail: [email protected],[email protected] Power-law forgetting in synapses with metaplasticity 2

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تاریخ انتشار 2011