Barmin Artem, Velichkovsky Boris B
Laboratory for Cognitive Studies of Communication, Moscow State Linguistic University.
Can J Exp Psychol. 2025 Mar;79(1):98-108. doi: 10.1037/cep0000350. Epub 2024 Oct 17.
This article provides an analysis of structural changes in second-language (L2)-based semantic memory networks-graphs composed of L2 words as nodes and semantic relations between them as edges, during L2 learning. We used snowball sampling paradigm to create individual semantic networks of participants divided into two groups differing in L2 learning time and then compare their structural characteristics cross-sectionally. The results showed that as L2 learning progresses, semantic memory networks tend to become more connected (by increasing the average node degree), more efficient (by decreasing the average shortest path length), less fragmented (by decreasing the modularity), less centralized (by decreasing the centralization), less dense (by decreasing the density), and no more "small-worlded" (by similar average clustering coefficients and small-world indices). The findings provide quantitative evidence of how the duration of L2 learning shapes the structure of L2-based semantic memory networks generated in the snowball sampling paradigm. (PsycInfo Database Record (c) 2025 APA, all rights reserved).
本文分析了在第二语言(L2)学习过程中,基于第二语言的语义记忆网络的结构变化。这种网络以L2单词为节点,单词之间的语义关系为边构成图表。我们采用滚雪球抽样范式创建了分为两组的参与者的个体语义网络,这两组在L2学习时间上有所不同,然后对它们的结构特征进行横断面比较。结果表明,随着L2学习的进展,语义记忆网络倾向于变得连接更紧密(通过增加平均节点度)、效率更高(通过缩短平均最短路径长度)、碎片化程度更低(通过降低模块化程度)、中心化程度更低(通过降低中心化程度)、密度更低(通过降低密度),并且不再具有更多的“小世界”特性(通过相似的平均聚类系数和小世界指数)。这些发现为L2学习时长如何塑造在滚雪球抽样范式中生成的基于L2的语义记忆网络结构提供了定量证据。(PsycInfo数据库记录(c)2025美国心理学会,保留所有权利)