发音
正字法
计算机科学
词(群论)
单词识别
自然语言处理
词汇判断任务
人工智能
连接主义
语音识别
阅读(过程)
语言学
心理学
人工神经网络
认知
神经科学
哲学
作者
Mark S. Seidenberg,James L. McClelland
出处
期刊:Psychological Review
[American Psychological Association]
日期:1989-01-01
卷期号:96 (4): 523-568
被引量:3420
标识
DOI:10.1037/0033-295x.96.4.523
摘要
A parallel distributed processing model of visual word recognition and pronunciation is described. The model consists of sets of orthographic and phonological units and an interlevel of hidden units. Weights on connections between units were modified during a training phase using the back-propagation learning algorithm. The model simulates many aspects of human performance, including (a) differences between words in terms of processing difficulty, (b) pronunciation of novel items, (c) differences between readers in terms of word recognition skill, (d) transitions from beginning to skilled reading, and (e) differences in performance on lexical decision and naming tasks. The model's behavior early in the learning phase corresponds to that of children acquiring word recognition skills. Training with a smaller number of hidden units produces output characteristic of many dyslexic readers. Naming is simulated without pronunciation rules, and lexical decisions are simulated without accessing word-level representations. The performance of the model is largely determined by three factors: the nature of the input, a significant fragment of written English; the learning rule, which encodes the implicit structure of the orthography in the weights on connections; and the architecture of the system, which influences the scope of what can be learned.
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