Learning Working Memory in Recurrent Spiking Neural Networks Using Heterogeneous Delays
Laurent Perrinet
Austrian Symposium on AI, Robotics and Vision
[2026-04-15]
Contact me @
laurent.perrinet@univ-amu.fr
Polychronization
Polychronization
Polychronization
Polychronization
Methods : BPTT (snn Torch) - frozen target
Methods : Weight initialization
$$ u_j(t) = \beta \cdot u_j(t-1) \cdot (1 - s_j(t-1)) + \sum_{i=1}^{N} \bigl (
% b_i + \sum_{d=1}^{D} \mathbf{W}_{j, i, d} \cdot s_i(t-d) \bigr ), $$
Dual Column Layout
Benefits
Open source
Version control
No vendor lock-in
Works offline
Use Cases
Tech talks
Academic papers
Team updates
Training sessions
Results : recall of target
Results : role of parameters
Results : recall of target
Learning Working Memory in Recurrent Spiking Neural Networks Using Heterogeneous Delays
Laurent Perrinet
Austrian Symposium on AI, Robotics and Vision
[2026-04-15]
Contact me @
laurent.perrinet@univ-amu.fr