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首页> 外文期刊>Neural Computing & Applications >Learning as a nonlinear line of attraction in a recurrent neural network
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Learning as a nonlinear line of attraction in a recurrent neural network

机译:作为递归神经网络中的非线性吸引力线进行学习

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摘要

A method to embed N dimensional, multi-valued patterns into an auto-associative memory represented as a nonlinear line of attraction in a fully connected recurrent neural network is presented in this paper. The curvature of the nonlinear attractor is defined by the Kth degree polynomial line which best fits the training data in N dimensional state space. The width of the nonlinear line is then characterized by the statistical characteristics of the training patterns. Stability of the recurrent network is verified by analyzing the trajectory of the points in the state space during convergence. The performance of the network is benchmarked through the reconstruction of original gray-scale images from their corrupted versions. It is observed that the proposed method can quickly and successfully reconstruct each image with an average convergence rate of 3.10 iterations.
机译:本文提出了一种在完全连接的递归神经网络中将N维,多值模式嵌入到表示为非线性吸引线的自联想存储器中的方法。非线性吸引子的曲率由最适合N维状态空间中训练数据的K次多项式线定义。然后通过训练模式的统计特征来表征非线性线的宽度。通过分析收敛过程中状态空间中各点的轨迹,验证了递归网络的稳定性。通过从损坏的版本重建原始灰度图像来对网络的性能进行基准测试。可以看出,该方法能够以3.10次迭代的平均收敛速度快速,成功地重建每个图像。

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