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Nonword Reading: Comparing Dual-Route Cascaded and Connectionist Dual-Process Models With Human Data

机译:非文字阅读:将双路线级联和连接主义双进程模型与人类数据进行比较

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Two prominent dual-route computational models of reading aloud are the dual-route cascaded (DRC) model, and the connectionist dual-process plus (CDP+) model. While sharing similarly designed lexical routes, the two models differ greatly in their respective nonlexical route architecture, such that they often differ on nonword pronunciation. Neither model has been appropriately tested for nonword reading pronunciation accuracy to date. We argue that empirical data on the nonword reading pronunciation of people is the ideal benchmark for testing. Data were gathered from 45 Australian-English-speaking psychology undergraduates reading aloud 412 nonwords. To provide contrast between the models, the nonwords were chosen specifically because DRC and CDP+ disagree on their pronunciation. Both models failed to accurately match the experiment data, and both have deficiencies in nonword reading performance. However, the CDP+ model performed significantly worse than the DRC model. CDP++, the recent successor to CDP+, had improved performance over CDP+, but was also significantly worse than DRC. In addition to highlighting performance shortcomings in each model, the variety of nonword responses given by participants points to a need for models that can account for this variety.
机译:朗读的两个著名的双路由计算模型是双路由级联(DRC)模型和连接主义双进程加(CDP +)模型。在共享相似设计的词汇路径时,这两个模型在各自的非词汇路径体系结构上存在很大差异,因此它们在非单词发音上经常会有所不同。迄今为止,尚未对这两种模型的非单词读取发音准确性进行适当测试。我们认为,关于人们非单词阅读发音的经验数据是测试的理想基准。数据收集自45位讲英语的非英语的心理学大学生。为了提供模型之间的对比,选择了非单词是因为DRC和CDP +在其发音上存在分歧。两种模型均无法准确匹配实验数据,并且两者在非单词阅读性能方面均存在不足。但是,CDP +模型的性能明显比DRC模型差。 CDP ++是CDP +的最新继任者,与CDP +相比,性能有所提高,但也比DRC差很多。除了突出每种模型的性能缺陷外,参与者给出的非单词响应的多样性还表明需要一种可以解释这种多样性的模型。

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