Statistical Word Learning is a Continuous Process: Evidence from the Human Simulation Paradigm.

Yayun Zhang, Daniel Yurovsky, Chen Yu
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Abstract

In the word-learning domain, both adults and young children are able to find the correct referent of a word from highly ambiguous contexts that involve many words and objects by computing distributional statistics across the co-occurrences of words and referents at multiple naming moments (Yu & Smith, 2007; Smith & Yu, 2008). However, there is still debate regarding how learners accumulate distributional information to learn object labels in natural learning environments, and what underlying learning mechanism learners are most likely to adopt. Using the Human Simulation Paradigm (Gillette, Gleitman, Gleitman & Lederer, 1999), we found that participants' learning performance gradually improved and that their ability to remember and carry over partial knowledge from past learning instances facilitated subsequent learning. These results support the statistical learning model that word learning is a continuous process.

统计词汇学习是一个持续的过程:来自人类模拟范例的证据
在单词学习领域,成人和幼儿都能够通过计算单词和指代物在多个命名时刻共同出现的分布统计数据,从涉及许多单词和物体的高度模糊语境中找到单词的正确指代物(Yu & Smith, 2007; Smith & Yu, 2008)。然而,关于学习者如何在自然学习环境中积累分布信息以学习对象标签,以及学习者最有可能采用的基本学习机制,仍存在争议。通过使用人类模拟范式(Gillette, Gleitman, Gleitman & Lederer, 1999),我们发现参与者的学习成绩逐渐提高,而且他们记忆和继承过去学习实例中部分知识的能力促进了后续学习。这些结果支持统计学习模型,即单词学习是一个持续的过程。
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