论文标题

试用学习如何在精神词典中塑造映射:通过线性判别学习对词汇决定进行建模

How trial-to-trial learning shapes mappings in the mental lexicon: Modelling Lexical Decision with Linear Discriminative Learning

论文作者

Heitmeier, Maria, Chuang, Yu-Ying, Baayen, R. Harald

论文摘要

在许多研究中发现了试验效应,表明处理刺激会影响随后的试验中的反应。一个特殊情况是启动效应,通过错误驱动的学习成功建立了模型(Marsolek,2008),这意味着参与者在实验过程中正在不断学习。这项研究调查了在未提出的词汇决策实验中是否可以检测到试验学习。我们使用了判别词典模型(DLM; Baayen等,2019),这是一种具有分布语义的含义表示的精神词典模型,该模型具有分布式语义的含义表示,该模型模拟了具有widrow-hoff规则的错误驱动增量学习。我们使用了英国词典项目(BLP; Keuleers等,2012)的数据,并对每个受试者单独进行试用基础模拟了DLM的词汇决策实验。然后,使用源自DLM模拟作为预测因子的措施,用广义添加剂模型(GAM)预测反应时间。我们从每个受试者的两个模拟中提取了措施(一个在试验之间进行了学习更新,一个没有),并将其用作两个GAM的输入。基于学习的模型比大多数受试者的非学习模型表现出更好的模型拟合度。我们的措施还为词汇处理和个体差异提供了见解。这证明了DLM对行为数据进行建模的潜力,并得出这样的结论:在未提出的词汇决策中确实可以检测到试验到试验的学习。我们的结果支持我们的词汇知识可能会持续变化的可能性。

Trial-to-trial effects have been found in a number of studies, indicating that processing a stimulus influences responses in subsequent trials. A special case are priming effects which have been modelled successfully with error-driven learning (Marsolek, 2008), implying that participants are continuously learning during experiments. This study investigates whether trial-to-trial learning can be detected in an unprimed lexical decision experiment. We used the Discriminative Lexicon Model (DLM; Baayen et al., 2019), a model of the mental lexicon with meaning representations from distributional semantics, which models error-driven incremental learning with the Widrow-Hoff rule. We used data from the British Lexicon Project (BLP; Keuleers et al., 2012) and simulated the lexical decision experiment with the DLM on a trial-by-trial basis for each subject individually. Then, reaction times were predicted with Generalised Additive Models (GAMs), using measures derived from the DLM simulations as predictors. We extracted measures from two simulations per subject (one with learning updates between trials and one without), and used them as input to two GAMs. Learning-based models showed better model fit than the non-learning ones for the majority of subjects. Our measures also provide insights into lexical processing and individual differences. This demonstrates the potential of the DLM to model behavioural data and leads to the conclusion that trial-to-trial learning can indeed be detected in unprimed lexical decision. Our results support the possibility that our lexical knowledge is subject to continuous changes.

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