Graduate School of Human Sciences, Osaka University, Suita, Osaka, Japan.
International Research Center for Neurointelligence (WPI-IRCN), The University of Tokyo Institutes for Advanced Study, Bunkyo, Tokyo, Japan.
Dev Sci. 2024 Jul;27(4):e13499. doi: 10.1111/desc.13499. Epub 2024 Mar 27.
Scale errors are intriguing phenomena in which a child tries to perform an object-specific action on a tiny object. Several viewpoints explaining the developmental mechanisms underlying scale errors exist; however, there is no unified account of how different factors interact and affect scale errors, and the statistical approaches used in the previous research do not adequately capture the structure of the data. By conducting a secondary analysis of aggregated datasets across nine different studies (n = 528) and using more appropriate statistical methods, this study provides a more accurate description of the development of scale errors. We implemented the zero-inflated Poisson (ZIP) regression that could directly handle the count data with a stack of zero observations and regarded developmental indices as continuous variables. The results suggested that the developmental trend of scale errors was well documented by an inverted U-shaped curve rather than a simple linear function, although nonlinearity captured different aspects of the scale errors between the laboratory and classroom data. We also found that repeated experiences with scale error tasks reduced the number of scale errors, whereas girls made more scale errors than boys. Furthermore, a model comparison approach revealed that predicate vocabulary size (e.g., adjectives or verbs), predicted developmental changes in scale errors better than noun vocabulary size, particularly in terms of the presence or absence of scale errors. The application of the ZIP model enables researchers to discern how different factors affect scale error production, thereby providing new insights into demystifying the mechanisms underlying these phenomena. A video abstract of this article can be viewed at https://youtu.be/1v1U6CjDZ1Q RESEARCH HIGHLIGHTS: We fit a large dataset by aggregating the existing scale error data to the zero-inflated Poisson (ZIP) model. Scale errors peaked along the different developmental indices, but the underlying statistical structure differed between the in-lab and classroom datasets. Repeated experiences with scale error tasks and the children's gender affected the number of scale errors produced per session. Predicate vocabulary size (e.g., adjectives or verbs) better predicts developmental changes in scale errors than noun vocabulary size.
尺度错误是一种有趣的现象,即儿童试图用微小的物体完成特定物体的动作。目前有几种观点可以解释导致尺度错误的发展机制;然而,对于不同因素如何相互作用并影响尺度错误,还没有一个统一的解释,并且之前研究中使用的统计方法并不能充分捕捉数据的结构。通过对来自九个不同研究(n=528)的聚合数据集进行二次分析,并使用更合适的统计方法,本研究更准确地描述了尺度错误的发展过程。我们实施了零膨胀泊松(ZIP)回归,可以直接处理具有大量零观测值的计数数据,并将发展指数视为连续变量。结果表明,尽管非线性在实验室和课堂数据之间捕捉到了尺度错误的不同方面,但尺度错误的发展趋势很好地由倒 U 型曲线记录,而不是简单的线性函数。我们还发现,反复进行尺度错误任务会减少尺度错误的数量,而女孩比男孩犯更多的尺度错误。此外,模型比较方法表明,谓语词汇量(例如形容词或动词)比名词词汇量更能预测尺度错误的发展变化,尤其是在是否存在尺度错误方面。ZIP 模型的应用使研究人员能够辨别出不同因素如何影响尺度错误的产生,从而为揭示这些现象背后的机制提供新的见解。本文的视频摘要可在 https://youtu.be/1v1U6CjDZ1Q 上观看。研究亮点:我们通过将现有的尺度错误数据聚合到零膨胀泊松(ZIP)模型中,对大量数据集进行拟合。尺度错误在不同的发展指标上达到峰值,但实验室和课堂数据集的基础统计结构不同。反复进行尺度错误任务和儿童的性别会影响每次会议产生的尺度错误数量。谓语词汇量(例如形容词或动词)比名词词汇量更能预测尺度错误的发展变化。