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Globally Optimal Training of Spiking Neural Networks via Parameter Reconstruction

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Spiking Neural Networks (SNNs) have been proposed as biologically plausible and energy-efficient alternatives to conventional Artificial Neural Networks (ANNs). However, the training of SNN usually relies on surrogate gradients due to the non-differentiability of the spike function, introducing approximation errors that accumulate across layers. To address this challenge, we extend the work on convexification of parallel feedforward threshold networks to parallel recurrent threshold networks, which subsume parallel SNNs as a structured special case. Building on this theoretical framework, we propose a parameter reconstruction algorithm for SNN training that demonstrates consistent and significant advantages across various tasks, both as a standalone method and in combination with surrogate-gradient training. The ablations further demonstrate the data scalability and robustness to model configurations of our training algorithm, pointing toward its potential in large-scale SNN training.

Himanshu Udupi, Xiaocong Yang, ChengXiang Zhai• 2026

Related benchmarks

TaskDatasetResultRank
Sequential Image ClassificationMNIST Sequential (test)
Accuracy92.5
51
First-Last XORFIRST-LAST-XOR (test)
Accuracy100
8
Arithmetic AdditionArithmetic Addition Base 3 ID n=5
Token-wise Accuracy36.6
4
Arithmetic AdditionArithmetic Addition Base 3 OOD-2x
Token-wise Accuracy31.4
4
Arithmetic AdditionArithmetic Addition Base 3 OOD-5x
Token-wise Accuracy30.7
4
Arithmetic AdditionArithmetic Addition Base 3 OOD-10x
Token-wise Accuracy31
4
Arithmetic AdditionArithmetic Addition Base 5, ID n=5
Token-wise Accuracy23
4
Arithmetic AdditionArithmetic Addition Base 5, OOD-2x
Token-wise Accuracy18.8
4
Arithmetic AdditionArithmetic Addition Base 5, OOD-5x
Token-wise Accuracy17.3
4
Arithmetic AdditionArithmetic Addition Base 5, OOD-10x
Token Accuracy17.2
4
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