首页> 外文会议>International Conference on Artificial Neural Networks(ICANN 2007); 20070909-13; Porto(PT) >Improving the Prediction Accuracy of Echo State Neural Networks by Anti-Oja's Learning
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Improving the Prediction Accuracy of Echo State Neural Networks by Anti-Oja's Learning

机译:通过Anti-Oja的学习提高回声状态神经网络的预测精度

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Echo state neural networks, which are a special case of recurrent neural networks, are studied from the viewpoint of their learning ability, with a goal to achieve their greater prediction ability. A standard training of these neural networks uses pseudoinverse matrix for one-step learning of weights from hidden to output neurons. This regular adaptation of Echo State neural networks was optimized by updating the weights of the dynamic reservoir with Anti-Oja's learning. Echo State neural networks use dynamics of this massive and randomly initialized dynamic reservoir to extract interesting properties of incoming sequences. This approach was tested in laser fluctuations and Mackey-Glass time series prediction. The prediction error achieved by this approach was substantially smaller in comparison with prediction error achieved by a standard algorithm.
机译:从循环神经网络的学习能力的角度研究回声状态神经网络,这是循环神经网络的特例,目的是实现其更大的预测能力。这些神经网络的标准训练将伪逆矩阵用于从隐藏神经元到输出神经元的权重的一步学习。通过使用Anti-Oja的学习更新动态储层的权重,优化了Echo State神经网络的常规适应性。回声状态神经网络使用此大规模随机初始化的动态库的动力学来提取传入序列的有趣特性。该方法已在激光波动和Mackey-Glass时间序列预测中进行了测试。与通过标准算法实现的预测误差相比,通过这种方法实现的预测误差要小得多。

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