用于手写数字识别的Rosenblatt感知器

Kussul Emst
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引用次数: 39

摘要

Rosenblatt感知器用于手写数字识别。为了测试其性能,使用了MNIST数据库。感知器训练使用60,000个手写数字样本,测试使用10,000个样本。识别率为99.2%。Rosenblatt感知器的关键参数是联想神经元层的神经元数量N。我们把参数N从1000改成了512000。我们研究了这个参数对Rosenblatt感知器性能的影响。将N从1,000增加到512,000涉及将测试误差从5倍减少到8倍。结果表明,大规模Rosenblatt感知器与MNIST数据库上的最佳分类器(98.9%-99.3%)相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rosenblatt perceptrons for handwritten digit recognition
The Rosenblatt perceptron was used for handwritten digit recognition. For testing its performance the MNIST database was used. 60,000 samples of handwritten digits were used for perceptron training, and 10,000 samples for testing. A recognition rate of 99.2% was obtained. The critical parameter of Rosenblatt perceptrons is the number of neurons N in the associative neuron layer. We changed the parameter N from 1,000 to 512,000. We investigated the influence of this parameter on the performance of the Rosenblatt perceptron. Increasing N from 1,000 to 512,000 involves decreasing of test errors from 5 to 8 times. It was shown that a large scale Rosenblatt perceptron is comparable with the best classifiers checked on MNIST database (98.9%-99.3%).
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