Research Centre for Language, Cognition, and Neuroscience, Department of Chinese and Bilingual Studies, The Hong Kong Polytechnic University, Hong Kong.
Department of Electronic Engineering, The Chinese University of Hong Kong, Hong Kong.
Q J Exp Psychol (Hove). 2020 Dec;73(12):2132-2147. doi: 10.1177/1747021820957135. Epub 2020 Sep 24.
Clustering and switching are hypothesised to reflect the automatic and controlled components in category fluency, respectively, but how they are associated with cognitive functions has not been fully elucidated, due to several uncertainties. (1) The conventional scoring method that segregates responses by semantic categories could not optimally dissociate the automatic and controlled components. (2) The temporal structure of individual responses, as characterised by mean retrieval time (MRT) and mean switching time (MST), has seldom been analysed alongside the more well-studied variables, cluster size (CS) and number of switches (NS). (3) Most studies examined only one to a few semantic categories, raising concerns of generalisability. This study built upon a distance-based automatic clustering procedure, referred to as temporal-semantic distance procedure, to thoroughly characterise the category fluency performance. Linear mixed-effects (LME) modelling was applied to re-examine the differential associations of clustering and switching with cognitive functions with a sample of 80 university students. Our results revealed that although lexical retrieval speed (LRS) is clearly the determining factor for effective clustering and switching, matrix reasoning and processing speed also have significant roles to play, possibly in the processes of identifying and validating the semantic relationships. Interestingly, total fluency score was accurately predicted by the four clustering/switching indices alone; including the cognitive variables did not significantly improve the prediction. These findings underline the importance of the clustering and switching indices in explaining the category fluency performance and the cognitive demands in category fluency.
聚类和切换分别被假设为反映类别流畅性中的自动和控制成分,但由于存在几个不确定性,它们与认知功能的关联尚未得到充分阐明。(1) 传统的按语义类别划分反应的评分方法不能最佳地区分自动和控制成分。(2) 个体反应的时间结构,如平均检索时间 (MRT) 和平均切换时间 (MST),很少与更广泛研究的变量(簇大小 (CS) 和切换次数 (NS))一起进行分析。(3) 大多数研究仅检查了一到几个语义类别,这引起了对普遍性的关注。本研究基于基于距离的自动聚类程序,即时间-语义距离程序,来彻底描述类别流畅性表现。线性混合效应 (LME) 模型被应用于重新检查聚类和切换与认知功能的差异关联,样本包括 80 名大学生。我们的结果表明,尽管词汇检索速度 (LRS) 显然是有效聚类和切换的决定因素,但矩阵推理和处理速度也有重要作用,可能在识别和验证语义关系的过程中发挥作用。有趣的是,四个聚类/切换指标单独就能准确预测总流畅性得分;包括认知变量在内并不能显著提高预测能力。这些发现强调了聚类和切换指标在解释类别流畅性表现和类别流畅性中的认知需求方面的重要性。