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婴儿如何在纷繁复杂的环境中开始学习物体名称?

How do infants start learning object names in a sea of clutter?

作者信息

Raz Hadar Karmazyn, Abney Drew H, Crandall David, Yu Chen, Smith Linda B

机构信息

Department of Psychological and Brain Sciences, Indiana University, Bloomington, IN 47405 USA.

出版信息

Cogsci. 2019 Jul;2019:521-526.

Abstract

Infants are powerful learners. A large corpus of experimental paradigms demonstrate that infants readily learn distributional cues of name-object co-occurrences. But infants' natural learning environment is cluttered: every heard word has multiple competing referents in view. Here we ask how infants start learning name-object co-occurrences in naturalistic learning environments that are cluttered and where there is much visual ambiguity. The framework presented in this paper integrates a naturalistic behavioral study and an application of a machine learning model. Our behavioral findings suggest that in order to start learning object names, infants and their parents consistently select a set of a few objects to play with during a set amount of time. What emerges is a frequency distribution of a few toys that approximates a Zipfian frequency distribution of objects for learning. We find that a machine learning model trained with a Zipf-like distribution of these object images outperformed the model trained with a uniform distribution. Overall, these findings suggest that to overcome referential ambiguity in clutter, infants may be selecting just a few toys allowing them to learn many distributional cues about a few name-object pairs.

摘要

婴儿是强大的学习者。大量的实验范式表明,婴儿很容易学习名称与物体共现的分布线索。但婴儿的自然学习环境很杂乱:听到的每个单词在视野中都有多个相互竞争的指代对象。在这里,我们要问的是,在杂乱且存在诸多视觉模糊性的自然主义学习环境中,婴儿是如何开始学习名称与物体的共现关系的。本文提出的框架整合了一项自然主义行为研究和一个机器学习模型的应用。我们的行为研究结果表明,为了开始学习物体名称,婴儿及其父母在一定时间内会持续选择一组少量的物体进行玩耍。由此出现的是一些玩具的频率分布,它近似于用于学习的物体的齐普夫频率分布。我们发现,用这些物体图像的类齐普夫分布训练的机器学习模型比用均匀分布训练的模型表现更好。总体而言,这些发现表明,为了克服杂乱环境中的指代模糊性,婴儿可能只选择少数几个玩具,以便学习关于少数几个名称 - 物体对的许多分布线索。

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本文引用的文献

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Cross-situational learning in a Zipfian environment.在 Zipf 环境下的跨情境学习。
Cognition. 2019 Aug;189:11-22. doi: 10.1016/j.cognition.2019.03.005. Epub 2019 Mar 20.
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Quantity and Diversity: Simulating Early Word Learning Environments.数量与多样性:模拟早期词汇学习环境。
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A Developmental Approach to Machine Learning?一种机器学习的发展方法?
Front Psychol. 2017 Dec 5;8:2124. doi: 10.3389/fpsyg.2017.02124. eCollection 2017.
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