Arciuli Joanne
Faculty of Health Sciences, The University of Sydney, Sydney 2141, Australia
Philos Trans R Soc Lond B Biol Sci. 2017 Jan 5;372(1711). doi: 10.1098/rstb.2016.0058.
The central argument presented in this paper is that statistical learning (SL) is an ability comprised of multiple components that operate largely implicitly. Components relating to the stimulus encoding, retention and abstraction required for SL may include, but are not limited to, certain types of attention, processing speed and memory. It is likely that individuals vary in terms of the efficiency of these underlying components, and in patterns of connectivity among these components, and that SL tasks differ from one another in how they draw on certain underlying components more than others. This theoretical framework is of value because it can assist in gaining a clearer understanding of how SL is linked with individual differences in complex mental activities such as language processing. Variability in language processing across individuals is of central concern to researchers interested in child development, including those interested in neurodevelopmental disorders where language can be affected such as autism spectrum disorders (ASD). This paper discusses the link between SL and individual differences in language processing in the context of age-related changes in SL during infancy and childhood, and whether SL is affected in ASD. Viewing SL as a multi-component ability may help to explain divergent findings from previous empirical research in these areas and guide the design of future studies.This article is part of the themed issue 'New frontiers for statistical learning in the cognitive sciences'.
本文提出的核心观点是,统计学习(SL)是一种由多个主要以隐性方式运作的成分组成的能力。与SL所需的刺激编码、保留和抽象相关的成分可能包括但不限于某些类型的注意力、处理速度和记忆。很可能个体在这些潜在成分的效率以及这些成分之间的连接模式方面存在差异,而且SL任务在对某些潜在成分的依赖程度上也各不相同。这一理论框架具有价值,因为它有助于更清楚地理解SL如何与诸如语言处理等复杂心理活动中的个体差异相关联。个体间语言处理的变异性是对儿童发展感兴趣的研究人员,包括那些对可能影响语言的神经发育障碍(如自闭症谱系障碍,ASD)感兴趣的研究人员所关注的核心问题。本文在婴儿期和儿童期SL与年龄相关变化的背景下,讨论了SL与语言处理个体差异之间的联系,以及SL在ASD中是否受到影响。将SL视为一种多成分能力可能有助于解释这些领域先前实证研究的不同结果,并指导未来研究的设计。本文是主题为“认知科学中统计学习的新前沿”特刊的一部分。