Title of article :
A model for neural representation of temporal duration
Author/Authors :
Okamoto، Hiroshi نويسنده , , Fukai، Tomoki نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2000
Abstract :
To address how temporal duration is encoded in neural systems, we put forward a simple model for recurrent neural networks. Particular assumptions are only the following two: (1) neuronal bistability and; (2) environmental effects described by a heat bath. The results of Monte Carlo simulation show that population activity triggered at an initial time continues for a prolonged duration, followed by an abrupt self-termination. This time course seems highly suitable for neural representation of temporal duration. The time scale of this prolonged duration is much longer than the time scale of neuronal firing which is of the order of ms. The former time scale implies that of interval timing in cognition and behaviour. Thus, the model provides a possible explanation for a link between these two separated time scales. The Weber law, a hallmark of humans and animalsʹ interval timing, can also be reproduced in our model.
Keywords :
Decision-theoretic planning , Regression , Decision trees , Abstraction , Bayesian networks , Markov decision processes
Journal title :
BioSystems
Journal title :
BioSystems