Dendritic neuron model trained by information feedback-enhanced differential evolution algorithm for classification

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As the well-known McCulloch–Pitts neuron model has long been criticized to be oversimplified, different algebra to formulate a single neuron model has received increasing interests. The dendritic neuron model (DNM) which considers the nonlinear information processing capacity of both synapses and dendrites has shown its effectiveness on classification problems. However, an effective learning method for DNM is still highly desired and challenging because the traditional error back-propagation (BP) algorithm usually suffers from issues originated from the proliferation of saddle points and local minima trapping. In this study, a novel non-BP learning algorithm based on the differential evolution algorithm is proposed. By fully incorporating the feedback information from evolving population and individuals, the proposed algorithm significantly outperforms other ten state-of-the-art non-BP algorithms and BP in terms of the classification accuracy. Additionally, the neural morphology and hardware realization are also confirmed. These lead us to believe that the well-learned DNM is considerably more powerful on computations than the traditional McCulloch–Pitts type, and can be possibly used as a fundamental unit in the next-generation deep learning techniques.

论文关键词:Dendritic neuron model,Evolutionary algorithms,Differential evolution,Back-propagation,Deep learning

论文评审过程:Received 14 July 2021, Revised 20 August 2021, Accepted 22 September 2021, Available online 24 September 2021, Version of Record 4 October 2021.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.107536