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Towards a Brain-Inspired Developmental Neural Network by Adaptive Synaptic Pruning

机译:通过自适应突触修剪向大脑启发的发育神经网络

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It is widely accepted that appropriate network topology should be empirically predefined before training a specific neural network learning task. However, in most cases, these carefully designed networks are easily falling into two kinds of dilemmas: (1) When the data is not enough to train the network well, it will get an underfitting result. (2) When networks have learned too much patterns, they are likely to lead to an overfitting result and have a poor performance on processing new data or transferring to other tasks. Inspired by the synaptic pruning characteristics of the human brain, we propose a brain-inspired developmental neural network (BDNN) algorithm by adaptive synaptic pruning (BDNN-sp) which could get rid of the overfitting and underfitting. The BDNN-sp algorithm adaptively modulates network topology by pruning useless neurons dynamically. In addition, the evolutional optimization method makes the network stop on an appropriate network topology with the best consideration of accuracy and adaptability. Experimental results indicate that the proposed algorithm could automatically find the optimal network topology and the network complexity could adaptively increase along with the increase of task complexity. Compared to the traditional topology-predefined networks, trained BDNN-sp has the similar accuracy but better transfer learning abilities.
机译:普遍接受的是,在训练特定的神经网络学习任务之前,应根据经验预先定义适当的网络拓扑。但是,在大多数情况下,这些经过精心设计的网络很容易陷入两种困境:(1)如果数据不足以很好地训练网络,则会得到欠拟合的结果。 (2)当网络学习了太多模式时,它们很可能导致过度拟合的结果,并且在处理新数据或转移到其他任务上的性能很差。受人脑突触修剪特性的启发,我们提出了一种通过自适应突触修剪(BDNN-sp)开发的脑启发性发展神经网络(BDNN)算法,该算法可以消除过度拟合和拟合不足的问题。 BDNN-sp算法通过动态修剪无用的神经元来自适应地调节网络拓扑。此外,进化优化方法使网络停在适当的网络拓扑上,同时要充分考虑准确性和适应性。实验结果表明,该算法能够自动找到最佳的网络拓扑结构,并且随着任务复杂度的增加,网络复杂度可以自适应地增加。与传统的拓扑预定义网络相比,训练有素的BDNN-sp具有相似的准确性,但具有更好的传递学习能力。

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