University Grenoble Alpes, CNRS, LPNC, 38000, Grenoble, France.
Psychon Bull Rev. 2022 Oct;29(5):1649-1672. doi: 10.3758/s13423-021-02042-4. Epub 2022 Mar 22.
How is orthographic knowledge acquired? In line with the self-teaching hypothesis, most computational models assume that phonological recoding has a pivotal role in orthographic learning. However, these models make simplifying assumptions on the mechanisms involved in visuo-orthographic processing. Against evidence from eye movement data during orthographic learning, they assume that orthographic information on novel words is immediately available and accurately encoded after a single exposure. In this paper, we describe BRAID-Learn, a new computational model of orthographic learning. BRAID-Learn is a probabilistic and hierarchical model that incorporates the mechanisms of visual acuity, lateral interference, and visual attention involved in word recognition. Orthographic learning in the model rests on three main mechanisms: first, visual attention moves over the input string to optimize the gain of information on letter identity at each fixation; second, top-down lexical influence is modulated as a function of stimulus familiarity; third, after exploration, perceived information is used to create a new orthographic representation or stabilize a better-specified representation of the input word. BRAID-Learn was challenged on its capacity to simulate the eye movement patterns reported in humans during incidental orthographic learning. In line with the behavioral data, the model predicts a larger decline with exposures in number of fixations and processing time for novel words than for known words. For novel words, most changes occur between the first and second exposure, that is to say, after creation in memory of a new orthographic representation. Beyond phonological recoding, our results suggest that visuo-attentional exploration is an intrinsic portion of orthographic learning seldom taken into consideration by models or theoretical accounts.
正字法知识是如何习得的?与自学假说一致,大多数计算模型都假设语音转写在正字法学习中起着关键作用。然而,这些模型对视觉正字法处理中涉及的机制做出了简化假设。与眼动数据在正字法学习中的证据相悖,它们假设新单词的正字法信息在单次暴露后立即可用且准确编码。在本文中,我们描述了 BRAID-Learn,这是一种新的正字法学习计算模型。BRAID-Learn 是一个概率和层次模型,它包含了视觉敏锐度、横向干扰和单词识别中涉及的视觉注意力的机制。该模型中的正字法学习依赖于三个主要机制:首先,视觉注意力在输入字符串上移动,以优化每个注视点上字母身份信息的增益;其次,作为刺激熟悉度的函数,自上而下的词汇影响被调制;第三,在探索之后,感知信息用于创建新的正字法表示或稳定输入单词的更好指定表示。BRAID-Learn 面临着模拟人类在偶然正字法学习中报告的眼动模式的挑战。与行为数据一致,该模型预测在注视次数和处理时间上,新单词的下降幅度大于已知单词。对于新单词,大多数变化发生在第一和第二暴露之间,也就是说,在记忆中创建新的正字法表示之后。除了语音转写之外,我们的结果还表明,视觉注意探索是正字法学习中很少被模型或理论解释考虑的固有部分。