Resources
Authors & Affiliations
Klaus Pawelzik,Mohammad Dehghani Habibabadi
Abstract
It is an open question to what extent neural coding and computation are based on precise
patterns of spikes. Theoretically individual neurons can serve as detectors for given spatio-temporal
spike patterns, however, this requires supervised adjustment of their input synapses. It is not known
if existing activity dependent synaptic plasticity mechanisms can lead to unsupervised emergence of
spatio-temporal pattern selectivity. Here, a combination of realistic mechanisms is demonstrated to
self-organize the synaptic input e?cacies such that neurons become detectors of patterns repeating
in the input. The proposed combination of learning mechanisms yields a balance of excitation and
inhibition similar to observations in cortex, robustness of detection against perturbations and noise,
and persistence of memory against ongoing plasticity. It enables groups of neurons to incrementally
learn sets of noisy patterns thereby faithfully representing their 'which' and 'when' in sequences. These
results suggest that computations based on spatio-temporal spike patterns might emerge without any
supervision from the synaptic plasticity mechanisms existing in the brain.