TY - CONF AU - Tetzlaff, Tom AU - Jordan, Jakob AU - Petrovici, Mihai A. AU - Breitwieser, Oliver AU - Schemmle, Johannes AU - Meier, Karlheinz AU - Diesmann, Markus TI - Deterministic networks for probabilistic computing M1 - FZJ-2018-02087 PY - 2018 AB - Neuronal-network models of high-level brain function often rely on the presence of stochasticity. The majority of these models assumes that each neuron is equipped with its own private source of randomness, often in the form of uncorrelated external noise. In biological neuronal networks, the origin of this noise remains unclear. In hardware implementations, the number of noise sources is limited due to space and bandwidth constraints. Hence, neurons in large networks have to share noise sources. We show that the resulting shared-noise correlations can significantly impair the computational performance of stochastic neuronal networks, but that this problem is naturally overcome by generating noise with deterministic recurrent neuronal networks. By virtue of the decorrelating effect of inhibitory feedback, a network of a few hundred neurons can serve as a natural source of uncorrelated noise for large ensembles of functional networks, each comprising thousands of units. T2 - Beyond Digital Computing 2018 CY - 19 Mar 2018 - 21 Mar 2018, Heidelberg (Germany) Y2 - 19 Mar 2018 - 21 Mar 2018 M2 - Heidelberg, Germany LB - PUB:(DE-HGF)1 UR - https://juser.fz-juelich.de/record/844705 ER -