Department of Cognitive Sciences, University of California, Irvine, Irvine, CA 92697, USA; Department of Human Development and Quantitative Methodology, University of Maryland, College Park, College Park, MD 20742, USA.
Department of Psychology, University of Hawai'i at Mānoa, Honolulu, HI 96822, USA; Department of Human Development and Quantitative Methodology, University of Maryland, College Park, College Park, MD 20742, USA.
J Exp Child Psychol. 2021 Sep;209:105156. doi: 10.1016/j.jecp.2021.105156. Epub 2021 Jun 2.
On average, preschoolers from lower-income households perform worse on symbolic numerical tasks than preschoolers from middle- and upper-income households. Although many recent studies have developed and tested mathematics interventions for low-income preschoolers, the variability within this population has received less attention. The goal of the current study was to describe the variability in low-income children's math skills using a person-centered analysis. We conducted a latent profile analysis on six measures of preschoolers' (N = 115, mean age = 4.6 years) numerical abilities (nonsymbolic magnitude comparison, verbal counting, object counting, cardinality, numeral identification, and symbolic magnitude comparison). The results showed different patterns of strengths and weaknesses and revealed four profiles of numerical skills: (a) poor math abilities on all numerical measures (n = 13), (b) strong math abilities on all numerical measures (n = 41), (c) moderate abilities on all numerical measures (n = 35), and (d) strong counting and numeral skills but poor magnitude skills (n = 26). Children's age, working memory, and inhibitory control significantly predicted their profile membership. We found evidence of quantitative and qualitative differences between profiles, such that some profiles were higher performing across tasks than others, but the overall patterns of performance varied across the different numerical skills assessed.
平均而言,来自低收入家庭的学龄前儿童在象征性数学任务上的表现不如来自中高收入家庭的学龄前儿童。尽管最近有许多研究为低收入学龄前儿童开发和测试了数学干预措施,但该人群的变异性受到的关注较少。本研究的目的是使用以个体为中心的分析来描述低收入儿童数学技能的可变性。我们对学龄前儿童(N=115,平均年龄为 4.6 岁)的六项数字能力(非符号大小比较、口头计数、物体计数、基数、数字识别和符号大小比较)进行了潜在剖面分析。结果显示出不同的优势和劣势模式,并揭示了四种数字技能的模式:(a)所有数字测量的数学能力差(n=13),(b)所有数字测量的数学能力强(n=41),(c)所有数字测量的中等能力(n=35),(d)计数和数字技能强但大小技能差(n=26)。儿童的年龄、工作记忆和抑制控制显著预测了他们的特征。我们发现了特征之间存在定量和定性差异的证据,例如,某些特征在任务上的表现优于其他特征,但不同评估的不同数字技能的整体表现模式各不相同。