稀疏自适应记忆与手写数字识别

B. Flachs, M. Flynn
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引用次数: 0

摘要

模式识别是一个新兴的领域,有许多可能的方法。本文描述了稀疏自适应记忆(SARI),这是一种建立在Parzen分类器、最近邻分类器、前馈神经网络的优势之上的联想记忆,与学习向量量化有关。这种学习体系结构的一个关键特性是能够自适应地更改其原型模式以及输出映射。当SAM改变列表中的原型模式时,它会隔离密度函数中的模式,从而产生某种意义上最优的分类器。揭示了梯度下降学习的一些非常重要的相互作用,提供了梯度下降收敛到联想记忆结构的可接受解的条件。可以在基本梯度下降学习算法的基础上构建一层学习启发式,以提高内存效率(错误率),从而降低硬件要求。一项模拟研究检验了这种启发式在手写数字识别中的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse adaptive memory and handwritten digit recognition
Pattern recognition is a budding field with many possible approaches. This article describes sparse adaptive memory (SARI), an associative memory built upon the strengths of Parzen classifiers, nearest neighbor classifiers, feedforward neural networks, and is related to learning vector quantization. A key feature of this learning architecture is the ability to adaptively change its prototype patterns in addition to its output mapping. As SAM changes the prototype patterns in the list, it isolates modes in the density functions to produce a classifier that is in some senses optimal. Some very important interactions of gradient descent learning are exposed, providing conditions under which gradient descent will converge to an admissible solution in an associative memory structure. A layer of learning heuristics can be built upon the basic gradient descent learning algorithm to improve memory efficiency in terms of error rate, and therefore hardware requirements. A simulation study examines the effects of one such heuristic in the context of handwritten digit recognition.<>
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