Abstract
By mimicking the hierarchical structure of human brain, deep spiking neural networks (DSNNs) can extract features from a lower level to a higher level gradually, and improve the performance for the processing of spatio-temporal information. Due to the complex hierarchical structure and implicit nonlinear mechanism, the formulation of spike train level supervised learning methods for DSNNs remains an important problem in this research area. Based on the definition of kernel function and spike trains inner product (STIP) as well as the idea of error backpropagation (BP), this paper firstly proposes a deep supervised learning algorithm for DSNNs named BP-STIP. Furthermore, in order to alleviate the intrinsic weight transport problem of the BP mechanism, feedback alignment (FA) and broadcast alignment (BA) mechanisms are utilized to optimize the error feedback mode of BP-STIP, and two deep supervised learning algorithms named FA-STIP and BA-STIP are also proposed. In the experiments, the effectiveness of the proposed three DSNN algorithms is verified on the MNIST digital image benchmark dataset, and the influence of different kernel functions on the learning performance of DSNNs with different network scales is analyzed. Experimental results show that the FA-STIP and BP-STIP algorithms can achieve 94.73% and 95.65% classification accuracy, which apparently possess better learning performance and stability compared with the benchmark algorithm BP-STIP.
Funder
National Natural Science Foundation of China
Key Research and Development Project of Gansu Province
Reference45 articles.
1. Artificial neural networks: Fundamentals, computing, design, and application;Basheer;J. Microbiol. Methods,2000
2. Seventy years beyond neural networks: Retrospect and prospect;Jiao;Chin. J. Comput.,2016
3. Spiking neural networks;Adeli;Int. J. Neural. Syst.,2009
4. Neural coding: Computational and biophysical perspectives;Kreiman;Phys. Life Rev.,2004
5. Deep learning;LeCun;Nature,2015
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