手写体数字分类中不同神经网络结构的比较

Isabelle M Guyon, I. Poujaud, L. Personnaz, G. Dreyfus, J. Denker, Y. Le Cun
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引用次数: 69

摘要

对几种神经网络分类器进行了评价,比较了它们在手写数字识别这一典型问题上的性能。为此,作者使用了一个手写数字数据库,这些数字的手写风格相对统一。作者提出了一种新颖的组织网络架构的方法,通过训练几个小网络来分别处理问题的子集,然后将结果组合起来。这种方法与各种技术结合使用,包括:具有一层或多层自适应连接的分层网络,完全连接的递归网络,没有自适应连接的自组织网络,以及具有二度多项式决策面的体系结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing different neural network architectures for classifying handwritten digits
An evaluation is made of several neural network classifiers, comparing their performance on a typical problem, namely handwritten digit recognition. For this purpose, the authors use a database of handwritten digits, with relatively uniform handwriting styles. The authors propose a novel way of organizing the network architectures by training several small networks so as to deal separately with subsets of the problem, and then combining the results. This approach works in conjunction with various techniques including: layered networks with one or several layers of adaptive connections, fully connected recursive networks, ad hoc networks with no adaptive connections, and architectures with second-degree polynomial decision surfaces.<>
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