Bayesian computation emerges in generic cortical microcircuits through
spike-timing-dependent plasticity
B. Nessler, M. Pfeiffer, L. Buesing, and W. Maass
Abstract:
The principles by which networks of neurons compute, and how spike-timing
dependent plasticity (STDP) of synaptic weights generates and maintains their
computational function, are unknown. Preceding work has shown that soft
winner-take-all (WTA) circuits, where pyramidal neurons inhibit each other
via interneurons, are a common motif of cortical microcircuits. We show
through theoretical analysis and computer simulations that Bayesian
computation is induced in these network motifs through STDP in combination
with activitydependent changes in the excitability of neurons. The
fundamental components of this emergent Bayesian computation are priors that
result from adaptation of neuronal excitability and implicit generative
models for hidden causes that are created in the synaptic weights through
STDP. In fact, a surprising result is that STDP is able to approximate a
powerful principle for fitting such implicit generative models to
high-dimensional spike inputs: Expectation Maximization. Our results suggest
that the experimentally observed spontaneous activity and trial-to-trial
variability of cortical neurons are essential features of their information
processing capability, since their functional role is to represent
probability distributions rather than static neural codes. Furthermore it
suggests networks of Bayesian computation modules as a new model for
distributed information processing in the cortex.
Reference: B. Nessler, M. Pfeiffer, L. Buesing, and W. Maass.
Bayesian computation emerges in generic cortical microcircuits through
spike-timing-dependent plasticity.
PLOS Computational Biology, 9(4):e1003037, 2013.