Department of Psychology, New York University.
Department of Psychological and Brain Sciences/Cognitive Science Program, Indiana University.
Cogn Sci. 2017 Apr;41(3):590-622. doi: 10.1111/cogs.12353. Epub 2016 Mar 14.
Prior research has shown that people can learn many nouns (i.e., word-object mappings) from a short series of ambiguous situations containing multiple words and objects. For successful cross-situational learning, people must approximately track which words and referents co-occur most frequently. This study investigates the effects of allowing some word-referent pairs to appear more frequently than others, as is true in real-world learning environments. Surprisingly, high-frequency pairs are not always learned better, but can also boost learning of other pairs. Using a recent associative model (Kachergis, Yu, & Shiffrin, 2012), we explain how mixing pairs of different frequencies can bootstrap late learning of the low-frequency pairs based on early learning of higher frequency pairs. We also manipulate contextual diversity, the number of pairs a given pair appears with across training, since it is naturalistically confounded with frequency. The associative model has competing familiarity and uncertainty biases, and their interaction is able to capture the individual and combined effects of frequency and contextual diversity on human learning. Two other recent word-learning models do not account for the behavioral findings.
先前的研究表明,人们可以从包含多个单词和对象的少量模棱两可的情况下学习许多名词(即词-对象映射)。为了成功进行跨情境学习,人们必须大致跟踪哪些单词和指代对象最常一起出现。本研究调查了允许某些词-指代对比其他词-指代对更频繁出现的效果,这在现实世界的学习环境中是真实存在的。令人惊讶的是,高频对并不总是学得更好,反而可以促进其他对的学习。使用最近的联想模型(Kachergis、Yu 和 Shiffrin,2012),我们解释了如何基于对高频对的早期学习,混合不同频率的对来引导低频对的后期学习。我们还操纵了上下文多样性,即给定对在训练中出现的次数,因为它与频率自然地混淆在一起。联想模型具有竞争的熟悉度和不确定性偏见,它们的相互作用能够捕捉频率和上下文多样性对人类学习的个体和综合影响。另外两个最近的单词学习模型无法解释行为发现。