Neuronal Self-Adaptation Enhances Capacity and Robustness of Representation in Spiking Neural Networks
arXiv cs.LG / 2026/3/24
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要点
- The paper proposes a biologically inspired Potassium-regulated LIF (KvLIF) neuron model to address limitations of standard LIF neurons in spiking neural networks (SNNs), particularly limited information capacity and noise sensitivity.
- KvLIF adds an auxiliary conductance state that combines membrane potential and spiking history to adaptively modulate neuronal excitability and reset dynamics.
- By extending the neurons’ dynamic response range to different input intensities, KvLIF is reported to suppress noise-induced spikes more effectively than existing LIF variants.
- The authors evaluate KvLIF on static image and neuromorphic datasets and find consistent gains in classification accuracy as well as improved robustness.
- The work positions KvLIF as a computationally efficient, biologically plausible neuron model suitable for low-power neuromorphic/edge deployment.
