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arxiv 2201.12738 v3 pith:2D5TSLHN submitted 2022-01-30 cs.NE cs.AIcs.LG

AutoSNN: Towards Energy-Efficient Spiking Neural Networks

classification cs.NE cs.AIcs.LG
keywords accuracysnnsautosnnspikesarchitectureneuralsearcharchitectures
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Spiking neural networks (SNNs) that mimic information transmission in the brain can energy-efficiently process spatio-temporal information through discrete and sparse spikes, thereby receiving considerable attention. To improve accuracy and energy efficiency of SNNs, most previous studies have focused solely on training methods, and the effect of architecture has rarely been studied. We investigate the design choices used in the previous studies in terms of the accuracy and number of spikes and figure out that they are not best-suited for SNNs. To further improve the accuracy and reduce the spikes generated by SNNs, we propose a spike-aware neural architecture search framework called AutoSNN. We define a search space consisting of architectures without undesirable design choices. To enable the spike-aware architecture search, we introduce a fitness that considers both the accuracy and number of spikes. AutoSNN successfully searches for SNN architectures that outperform hand-crafted SNNs in accuracy and energy efficiency. We thoroughly demonstrate the effectiveness of AutoSNN on various datasets including neuromorphic datasets.

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