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TC-LIF: A Two-Compartment Spiking Neuron Model for Long-Term Sequential Modelling

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The identification of sensory cues associated with potential opportunities and dangers is frequently complicated by unrelated events that separate useful cues by long delays. As a result, it remains a challenging task for state-of-the-art spiking neural networks (SNNs) to establish long-term temporal dependency between distant cues. To address this challenge, we propose a novel biologically inspired Two-Compartment Leaky Integrate-and-Fire spiking neuron model, dubbed TC-LIF. The proposed model incorporates carefully designed somatic and dendritic compartments that are tailored to facilitate learning long-term temporal dependencies. Furthermore, a theoretical analysis is provided to validate the effectiveness of TC-LIF in propagating error gradients over an extended temporal duration. Our experimental results, on a diverse range of temporal classification tasks, demonstrate superior temporal classification capability, rapid training convergence, and high energy efficiency of the proposed TC-LIF model. Therefore, this work opens up a myriad of opportunities for solving challenging temporal processing tasks on emerging neuromorphic computing systems. Our code is publicly available at https://github.com/ZhangShimin1/TC-LIF.

Shimin Zhang, Qu Yang, Chenxiang Ma, Jibin Wu, Haizhou Li, Kay Chen Tan• 2023

Related benchmarks

TaskDatasetResultRank
Sequential Image ClassificationsMNIST
Accuracy97.35
25
Speech Command RecognitionGoogle Speech Command Dataset 20-cmd V2 (test)
Accuracy94.84
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Spoken Digit RecognitionSHD
Accuracy88.91
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Continuous ControlDeepMind Control Suite visual observations
Acrobot Swingup Score106.5
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Spiking Sound RecognitionSHD (test)
Accuracy83.08
15
Permuted Sequential Image ClassificationPSMNIST
Accuracy0.9536
12
Spiking Auditory ClassificationSSC (test)
Accuracy63.46
11
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