TARGET体系结构:面向特征的连接词识别方法

M. Franzini
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引用次数: 1

摘要

提出了一种新的具有绝对分类能力的连接主义体系结构。在TARGET体系结构中,每个单元都有一个与之相关联的目标向量,这是网络较低层单元的输出值集合,它将导致单元被完全激活。当所有发送单元的输出与一个单元的目标向量非常匹配时,该单元输出的值接近于零。该网络通过梯度下降训练,使用与标准反向传播过程相同的方式导出的过程。本文报道了该系统在异或问题上的基本测试,其中系统的输出精度在1%以内。据报道,对该系统进行了更广泛的测试,使用了一个由西班牙语字母表中的29个字母组成的单说话者独立单词数据库,其中包含拼写的西班牙语单词。使用新结构的识别率为94.0%,而标准反向传播的识别率为92.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The TARGET architecture: a feature-oriented approach to connectionist word spotting
A new connectionist architecture with absolute classification capability is proposed. In the TARGET architecture, each unit has a target vector associated with it, which is the set of output values of units in a lower layer of the network which will cause the unit to be fully activated. When the outputs of all of the sending units closely match a unit's target vector, the unit outputs a value close to zero. The network is trained by gradient descent, using a procedure derived in the same manner as the standard back propagation procedure. A rudimentary test of this system on the exclusive-or-problem is reported, in which a system achieves outputs accurate within 1%. A more extensive test of the system is reported, using a single-speaker isolated-word database of spelled Spanish words, with a vocabulary consisting of the 29 letters of the Spanish alphabet. The recognition rate using the new architecture was 94.0%, compared with 92.5% for standard backpropagation.<>
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