| Literature DB >> 26801651 |
Peter Bratby1, James Sneyd2, John Montgomery3.
Abstract
In the adaptive filter model of the cerebellum, the granular layer performs a recoding which expands incoming mossy fibre signals into a temporally diverse set of basis signals. The underlying neural mechanism is not well understood, although various mechanisms have been proposed, including delay lines, spectral timing and echo state networks. Here, we develop a computational simulation based on a network of leaky integrator neurons, and an adaptive filter performance measure, which allows candidate mechanisms to be compared. We demonstrate that increasing the circuit complexity improves adaptive filter performance, and relate this to evolutionary innovations in the cerebellum and cerebellum-like structures in sharks and electric fish. We show how recurrence enables an increase in basis signal duration, which suggest a possible explanation for the explosion in granule cell numbers in the mammalian cerebellum.Entities:
Keywords: Adaptive filter; Cerebellum; Cerebellum-like; Computational simulation; Granular layer; Neural network
Mesh:
Year: 2017 PMID: 26801651 DOI: 10.1007/s12311-016-0759-z
Source DB: PubMed Journal: Cerebellum ISSN: 1473-4222 Impact factor: 3.847