ArXiv TLDR

Regime Mapping of Oscillatory States in Balanced Spiking Networks with Multiple Time Scales

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2604.04770

Tsung-Han Kuo, Tzu-Chia Tung

cs.NEq-bio.NC

TLDR

This paper maps how synaptic decay, conduction delay, and plasticity rate jointly shape oscillatory states in balanced spiking neural networks.

Key contributions

  • Systematically maps oscillatory regimes in spiking networks based on postsynaptic decay, conduction delay, and plasticity rate.
  • Shows increasing plasticity rate expands oscillatory regions towards shorter decay and moderate-to-long delays.
  • Identifies parameter regions with strongest rhythmic coherence using prominence maps.
  • Reveals STDP freezing weakens coherence, while delay jitter enhances it with minimal firing rate change.

Why it matters

This work provides a crucial reference for understanding and controlling oscillatory states in balanced spiking networks. It helps in selecting optimal operating points and informs future biologically-grounded neural network models. The findings are vital for synchrony modulation studies.

Original Abstract

Balanced spiking networks can transition between silent, asynchronous-irregular, and oscillatory states depending on interacting synaptic and temporal time scales, while their joint parameter structure remains incompletely characterized. In this work, we systematically map how postsynaptic decay (τs), conduction delay (d), and plasticity rate (λp) jointly shape oscillatory regimes in recurrent leaky integrate-and-fire networks. By combining Brian2 simulations across the (τs, d, λp) space with a coarse Hopf-reference boundary, we construct regime maps that directly visualize SIL-AI-OSC transitions and corresponding spectral prominence landscapes. The mapped results show that increasing λp expands oscillatory regions toward shorter τs and moderate-to-long delays, while prominence maps identify parameter regions with the strongest rhythmic coherence. Representative control experiments further connect this global landscape to local rhythm-forming mechanisms, showing that STDP freezing weakens rhythmic coherence whereas delay jitter enhances it with minimal change in mean firing rate. As a result, these findings provide a useful reference for operating-point selection, synchrony modulation studies, and future biologically grounded spiking-network modeling within similar balanced-network settings.

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