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How Data Drive Early Word Learning: A Cross-Linguistic Waiting Time Analysis

机译:数据如何推动早期学习:跨语言等待时间分析

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摘要

The extent to which word learning is delayed by maturation as opposed to accumulating data is a longstanding question in language acquisition. Further, the precise way in which data influence learning on a large scale is unknown—experimental results reveal that children can rapidly learn words from single instances as well as by aggregating ambiguous information across multiple situations. We analyze Wordbank, a large cross-linguistic dataset of word acquisition norms, using a statistical waiting time model to quantify the role of data in early language learning, building off Hidaka (2013). We find that the model both fits and accurately predicts the shape of children’s growth curves. Further analyses of model parameters suggest a primarily data-driven account of early word learning. The parameters of the model directly characterize both the amount of data required and the rate at which informative data occurs. With high statistical certainty, words require on the order of ∼ 10 learning instances, which occur on average once every two months. Our method is extremely simple, statistically principled, and broadly applicable to modeling data-driven learning effects in development.
机译:与累积数据相反,通过成熟延迟单词学习的程度是语言采集中的长期问题。此外,数据影响大规模的数据影响的精确方式是未知实验结果,表明儿童可以从单一实例迅速学习单词以及通过多种情况汇总模糊的信息。我们分析了WordBank,一个大型跨语言数据集的单词采集规范,使用统计等待时间模型来量化数据在早期语言学习中的作用,从HIDAKA(2013)上建立。我们发现该模型都适合并准确地预测儿童的生长曲线的形状。进一步分析模型参数提出了早期学习的主要数据驱动账户。模型的参数直接表征了所需的数据量和信息发生的速率。具有高统计确定性,单词需要约10个学习实例的顺序,每两个月平均发生一次。我们的方法非常简单,统计上原则,并广泛适用于建模数据驱动的发展中的发展效果。

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