Kachergis George, Yu Chen
Department of Artificial Intelligence, Donders Institute for Brain, Cognition, and Behavior, Radboud University, 6525 HR Nijmegen, the Netherlands.
Psychological & Brain Sciences, Indiana University, Bloomington, Indiana 47408.
IEEE Trans Cogn Dev Syst. 2018 Jun;10(2):227-236. doi: 10.1109/tcds.2017.2735540. Epub 2017 Aug 3.
Being able to learn word meanings across multiple scenes consisting of multiple words and referents (i.e., cross-situationally) is thought to be important for language acquisition. The ability has been studied in infants, children, and adults, and yet there is much debate about the basic storage and retrieval mechanisms that operate during cross-situational word learning. It has been difficult to uncover the learning mechanics in part because the standard experimental paradigm, which presents a few words and objects on each of a series of training trials, measures learning only at the end of training, after several occurrences of each word-object pair. Diverse models are able to match the final level of performance of the standard paradigm, while the rich history and context of the learning trajectories remain obscured. This study examines accuracy and uncertainty over time in a version of the cross-situational learning task in which words are tested throughout training, as well as in a final test. With similar levels of performance to the standard task, we examine how well the online response trajectories match recent hypothesis- and association-based computational models of word learning.eing able to learn word meanings across multiple scenes consisting of multiple words and referents (i.e., cross-situationally) is thought to be important for language acquisition. The ability has been studied in infants, children, and adults, and yet there is much debate about the basic storage and retrieval mechanisms that operate during cross-situational word learning. It has been difficult to uncover the learning mechanics in part because the standard experimental paradigm, which presents a few words and objects on each of a series of training trials, measures learning only at the end of training, after several occurrences of each word-object pair. Diverse models are able to match the final level of performance of the standard paradigm, while the rich history and context of the learning trajectories remain obscured. This study examines accuracy and uncertainty over time in a version of the cross-situational learning task in which words are tested throughout training, as well as in a final test. With similar levels of performance to the standard task, we examine how well the online response trajectories match recent hypothesis- and association-based computational models of word learning.B.
能够在由多个单词和指代物组成的多个场景中(即跨情境地)学习单词含义,被认为对语言习得很重要。人们已经在婴儿、儿童和成人身上研究了这种能力,然而,对于跨情境单词学习过程中起作用的基本存储和检索机制,仍存在很多争议。部分原因在于,标准实验范式在一系列训练试验的每一次试验中呈现几个单词和物体,仅在训练结束时、每个单词 - 物体对出现几次之后才测量学习情况,所以很难揭示学习机制。各种模型能够匹配标准范式的最终表现水平,而学习轨迹丰富的历史和背景仍然模糊不清。本研究考察了一种跨情境学习任务版本中随着时间推移的准确性和不确定性,在该任务中,单词在整个训练过程以及最终测试中都会接受测试。在与标准任务表现水平相似的情况下,我们考察在线反应轨迹与最近基于假设和联想的单词学习计算模型的匹配程度。能够在由多个单词和指代物组成的多个场景中(即跨情境地)学习单词含义,被认为对语言习得很重要。人们已经在婴儿、儿童和成人身上研究了这种能力,然而,对于跨情境单词学习过程中起作用的基本存储和检索机制,仍存在很多争议。部分原因在于,标准实验范式在一系列训练试验的每一次试验中呈现几个单词和物体,仅在训练结束时、每个单词 - 物体对出现几次之后才测量学习情况,所以很难揭示学习机制。各种模型能够匹配标准范式的最终表现水平,而学习轨迹丰富的历史和背景仍然模糊不清。本研究考察了一种跨情境学习任务版本中随着时间推移的准确性和不确定性,在该任务中,单词在整个训练过程以及最终测试中都会接受测试。在与标准任务表现水平相似的情况下,我们考察在线反应轨迹与最近基于假设和联想的单词学习计算模型的匹配程度。B.