Department of Speech, Hearing & Phonetic Sciences, University College London.
Department of Psychology, Lancaster University.
Top Cogn Sci. 2020 Jul;12(3):875-893. doi: 10.1111/tops.12454. Epub 2019 Sep 8.
Artificial grammar learning (AGL) has become an important tool used to understand aspects of human language learning and whether the abilities underlying learning may be unique to humans or found in other species. Successful learning is typically assumed when human or animal participants are able to distinguish stimuli generated by the grammar from those that are not at a level better than chance. However, the question remains as to what subjects actually learn in these experiments. Previous studies of AGL have frequently introduced multiple potential contributors to performance in the training and testing stimuli, but meta-analysis techniques now enable us to consider these multiple information sources for their contribution to learning-enabling intended and unintended structures to be assessed simultaneously. We present a blueprint for meta-analysis approaches to appraise the effect of learning in human and other animal studies for a series of artificial grammar learning experiments, focusing on studies that examine auditory and visual modalities. We identify a series of variables that differ across these studies, focusing on both structural and surface properties of the grammar, and characteristics of training and test regimes, and provide a first step in assessing the relative contribution of these design features of artificial grammars as well as species-specific effects for learning.
人工语法学习(AGL)已成为一种重要的工具,用于了解人类语言学习的各个方面,以及学习所依赖的能力是否具有人类独有的特性,或者是否存在于其他物种中。当人类或动物参与者能够从语法生成的刺激中区分出那些不是随机产生的刺激时,通常就被认为是成功地进行了学习。然而,问题仍然是,在这些实验中,受试者实际上学到了什么。先前的 AGL 研究经常在训练和测试刺激中引入多个潜在的影响表现的因素,但元分析技术现在使我们能够同时考虑这些多个信息来源,以评估它们对学习的贡献,包括有意和无意的结构。我们为评估一系列人工语法学习实验中人类和其他动物研究中的学习效果制定了元分析方法的蓝图,重点关注检查听觉和视觉模态的研究。我们确定了这些研究中存在差异的一系列变量,重点关注语法的结构和表面特性,以及训练和测试规则的特征,并首次评估了这些人工语法设计特征以及学习的物种特异性效应的相对贡献。