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首页> 外文期刊>Journal of computational and theoretical nanoscience >Chaos Based Network Initialization Approach for Feed Forward Artificial Neural Networks
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Chaos Based Network Initialization Approach for Feed Forward Artificial Neural Networks

机译:基于混沌的馈送前沿人工神经网络的网络初始化方法

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摘要

Weight initialization of sigmoidal feed forward artificial neural network (SFFANN) and the Convolutional neural networks (CNN) has been a known factor which affects the learning abilities of the neural network. The uniform random weight initialization approach has been quite often used as the conventional network weight initial technique, due to its simplicity. However, various researches have shown that the random technique may not be the ideal choice of weight initialization for these neural networks. In this work, we analyze two separate chaotic functions and explore the possibilities of these being used as the weight initialization methods against the conventional random initialization technique for SFANNs as well as for the CNNs. For the SFFANNs, this analysis were done over 8 function approximation problems chosen for experimentation. The mean test error values along with a two sample t-test results strongly suggest that the Chebyshev chaotic map based weight initialization technique outperforms the conventional random initialization technique for most of the problems under consideration and hence may be used as an alternative weight initialization technique for the SFFANNs. For the CNN experiment, the MNIST dataset was used for analyzing the performance of the random and the Chebyshev based initialization scheme. Results strongly support the use of the Chebyshev chaotic map based initialization scheme as an alternate to the conventional random initialization.
机译:Sigmoider馈送前进人工神经网络(Sffann)的重量初始化和卷积神经网络(CNN)是影响神经网络的学习能力的已知因素。由于其简单性,均匀随机重量初始化方法已被用作传统网络重量初始技术。然而,各种研究表明,随机技术可能不是这些神经网络的重量初始化的理想选择。在这项工作中,我们分析了两个单独的混沌功能,并探讨了与SFANNS以及CNNS的传统随机初始化技术用作重量初始化方法的可能性。对于SFFANN,该分析是在选择用于实验的8个功能近似问题上进行的。平均测试误差值以及两个样本T检验结果强烈建议基于Chebyshev混沌映射的权重初始化技术优于传统的随机初始化技术,以了解所考虑的大多数问题,因此可以用作替代重量初始化技术Sffanns。对于CNN实验,MNIST DataSet用于分析随机和基于Chebyshev的初始化方案的性能。结果强烈支持基于Chebyshev混沌图的初始化方案作为传统随机初始化的交替。

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