Villeneuve Ethan F, Hajovsky Daniel B, Mason Benjamin A, Lewno Brittany M
Department of School Psychology.
Department of Special Education.
Sch Psychol Q. 2019 Jan;34(1):96-108. doi: 10.1037/spq0000267. Epub 2018 Jul 9.
Individual differences in Cattell-Horn-Carroll (CHC) cognitive abilities are related to individual differences in math problem solving. However, it is less clear whether cognitive abilities are associated with math problem solving directly or indirectly via math component skills and whether these relations differ across grade levels. We used multigroup structural equation models to examine direct and indirect CHC-based cognitive ability relations with math problem solving across six grade-level groups using the Kaufman Assessment Battery for Children, Second Edition and the Kaufman Tests of Educational Achievement, Second Edition co-normed standardization sample data ( = 2,117). After testing factorial invariance of the cognitive constructs across grade levels, we assessed whether the main findings were similar across higher-order and bifactor models. In the higher-order model, the Crystallized Ability, Visual Processing, and Short-Term Memory constucts had direct and indirect relations with math problem solving, whereas the Learning Efficiency and Retrieval Fluency constructs had only indirect relations with math problem solving via math computation. The integrated cognitive ability and math achievement relations were generally consistent across the CHC models of intelligence. In the higher-order model, the g factor operated indirectly on math computation and math problem solving, whereas in the bifactor model, the first-order factor had direct relations with math computation and math problem solving. In both models, was the most consistent and largest cognitive predictor of math skills. Last, the relation of math computation with math problem solving increased as grade level increased. Theoretical implications for math development and considerations for school psychologists are discussed. (PsycINFO Database Record (c) 2019 APA, all rights reserved).
卡特尔-霍恩-卡罗尔(CHC)认知能力的个体差异与数学问题解决中的个体差异相关。然而,认知能力是直接还是通过数学成分技能间接与数学问题解决相关,以及这些关系在不同年级水平上是否存在差异,目前尚不清楚。我们使用多组结构方程模型,通过考夫曼儿童能力评估测验第二版和考夫曼教育成就测验第二版共同常模标准化样本数据(N = 2117),检验基于CHC的认知能力与六个年级组数学问题解决之间的直接和间接关系。在检验了各年级水平认知结构的因素不变性之后,我们评估了高阶模型和双因素模型的主要研究结果是否相似。在高阶模型中,晶体能力、视觉加工和短期记忆结构与数学问题解决存在直接和间接关系,而学习效率和检索流畅性结构仅通过数学计算与数学问题解决存在间接关系。综合认知能力和数学成就的关系在CHC智力模型中总体上是一致的。在高阶模型中,g因素对数学计算和数学问题解决有间接作用,而在双因素模型中,一阶因素与数学计算和数学问题解决有直接关系。在两个模型中,都是数学技能最一致、最大的认知预测指标。最后,数学计算与数学问题解决的关系随着年级水平的提高而增强。讨论了对数学发展的理论意义以及对学校心理学家的启示。(PsycINFO数据库记录(c)2019美国心理学会,保留所有权利)