Parallel computing algorithm of neural networks on an eight-neighbor processor array
説明
The authors describe a parallel computing algorithm to simulate the backpropagation (BP) model and Kohonen's self-organizing feature map (SOFM) upon an eight-neighbor processor array. Taking account of the parallelism intrinsically found in neural networks, algorithms are presented which minimize the transmission overhead among processors, so that high-speed simulation of neural networks becomes feasible. The processing time required for one learning of BP or Kohonen's SOFM for one input vector is estimated. >
収録刊行物
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- Proceedings of Phoenix Conference on Computers and Communications
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Proceedings of Phoenix Conference on Computers and Communications 559-564, 2002-12-30
IEEE