{"title":"SOLAR versus SERIOL revisited","authors":"C. Davis","doi":"10.1080/09541440903155682","DOIUrl":null,"url":null,"abstract":"This paper compares two approaches to modelling orthographic processing, the Self-Organising Lexical Acquisition and Recognition (SOLAR; Davis, 1999, in press) and the Sequential Encoding Regulated by Inputs to Oscillating Letter units (SERIOL; Whitney, 2001, 2004) models, following up on a previous analysis by Whitney (2008). I provide a brief overview of the SOLAR model, and its key similarities to and differences from the SERIOL model, focusing in particular on the different mechanisms underlying the formation of the positional gradient in the two models. I also discuss the neural implementation of the SOLAR model's lexical matching algorithm, and its plausibility. In the final part of the paper I discuss empirical attempts to adjudicate between the two models, focusing on the masked form priming paradigm, as well as the use of theoretical match values to test model predictions. It is concluded that the SOLAR model provides an account of visual word identification that is neurally plausible and that succeeds in explaining critical orthographical similarity data, but that the SERIOL model does not satisfy these constraints.","PeriodicalId":88321,"journal":{"name":"The European journal of cognitive psychology","volume":"1 1","pages":"695 - 724"},"PeriodicalIF":0.0000,"publicationDate":"2010-03-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"31","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"The European journal of cognitive psychology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1080/09541440903155682","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 31
Abstract
This paper compares two approaches to modelling orthographic processing, the Self-Organising Lexical Acquisition and Recognition (SOLAR; Davis, 1999, in press) and the Sequential Encoding Regulated by Inputs to Oscillating Letter units (SERIOL; Whitney, 2001, 2004) models, following up on a previous analysis by Whitney (2008). I provide a brief overview of the SOLAR model, and its key similarities to and differences from the SERIOL model, focusing in particular on the different mechanisms underlying the formation of the positional gradient in the two models. I also discuss the neural implementation of the SOLAR model's lexical matching algorithm, and its plausibility. In the final part of the paper I discuss empirical attempts to adjudicate between the two models, focusing on the masked form priming paradigm, as well as the use of theoretical match values to test model predictions. It is concluded that the SOLAR model provides an account of visual word identification that is neurally plausible and that succeeds in explaining critical orthographical similarity data, but that the SERIOL model does not satisfy these constraints.
本文比较了两种模拟正字法加工的方法:自组织词汇习得和识别(SOLAR);Davis, 1999, in press)和序列编码调节的输入振荡字母单位(SERIOL;惠特尼,2001,2004)模型,在惠特尼(2008)之前的分析之后。我简要概述了SOLAR模型,以及它与SERIOL模型的主要相似点和不同点,特别关注两个模型中位置梯度形成的不同机制。我还讨论了SOLAR模型的词法匹配算法的神经实现及其可行性。在论文的最后一部分,我讨论了在两个模型之间进行判断的实证尝试,重点是掩模启动范式,以及使用理论匹配值来测试模型预测。得出的结论是,SOLAR模型提供了一种视觉词识别的描述,这种描述在神经上是可信的,并且成功地解释了关键的正字法相似度数据,但SERIOL模型不满足这些约束。