Majority Algorithm : A Formation for Neural Networks with the Quantized Connection Weights (Special Section of Papers Selected from ITC-CSCC'99)
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概要
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In this paper, we propose the majority algorithm to choose the connection weights for the neural networks with quantized connection weights of ±1 and 0. We also obtained the layered network to solve the parity problem with the input of arbitrary number N through an application of this algorithm. The network can be expected to have the same ability of generalization as the network trained with learning rules. This is because it is possible to decide the connection weights, regardless of the size of the training set. One can decide connection weights without learning according to our case study. Thus, we expect that the proposed algorithm may be applied for a realtime processing.
- 社団法人電子情報通信学会の論文
- 2000-06-25
著者
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PARK Cheol-Young
The author is with the Department of Computer and Communication Engineering, Taegu University
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NAKAJIMA Koji
The author is with the Laboratory for Electronic Intelligent Systems, Research Institute of Electric
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Park Cheol-young
The Author Is With The Department Of Computer And Communication Engineering Taegu University
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Nakajima Koji
The Author Is With The Laboratory For Electronic Intelligent Systems Research Institute Of Electrica