Frontiers in Neuroscience (Jul 2024)

Auto-Spikformer: Spikformer architecture search

  • Kaiwei Che,
  • Kaiwei Che,
  • Zhaokun Zhou,
  • Zhaokun Zhou,
  • Jun Niu,
  • Zhengyu Ma,
  • Wei Fang,
  • Wei Fang,
  • Yanqi Chen,
  • Yanqi Chen,
  • Shuaijie Shen,
  • Li Yuan,
  • Li Yuan,
  • Yonghong Tian,
  • Yonghong Tian

DOI
https://doi.org/10.3389/fnins.2024.1372257
Journal volume & issue
Vol. 18

Abstract

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IntroductionThe integration of self-attention mechanisms into Spiking Neural Networks (SNNs) has garnered considerable interest in the realm of advanced deep learning, primarily due to their biological properties. Recent advancements in SNN architecture, such as Spikformer, have demonstrated promising outcomes. However, we observe that Spikformer may exhibit excessive energy consumption, potentially attributable to redundant channels and blocks.MethodsTo mitigate this issue, we propose a one-shot Spiking Transformer Architecture Search method, namely Auto-Spikformer. Auto-Spikformer extends the search space to include both transformer architecture and SNN inner parameters. We train and search the supernet based on weight entanglement, evolutionary search, and the proposed Discrete Spiking Parameters Search (DSPS) methods. Benefiting from these methods, the performance of subnets with weights inherited from the supernet without even retraining is comparable to the original Spikformer. Moreover, we propose a new fitness function aiming to find a Pareto optimal combination balancing energy consumption and accuracy.Results and discussionOur experimental results demonstrate the effectiveness of Auto-Spikformer, which outperforms the original Spikformer and most CNN or ViT models with even fewer parameters and lower energy consumption.

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