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儿童早期概念中跨模态对齐的特征。

Signatures of cross-modal alignment in children's early concepts.

机构信息

Department of Experimental Psychology, University College London, London WC1H 0AP, United Kingdom.

The Alan Turing Institute, London NW1 2DB, United Kingdom.

出版信息

Proc Natl Acad Sci U S A. 2023 Oct 17;120(42):e2309688120. doi: 10.1073/pnas.2309688120. Epub 2023 Oct 11.

Abstract

Whether supervised or unsupervised, human and machine learning is usually characterized as event-based. However, learning may also proceed by systems alignment in which mappings are inferred between entire systems, such as visual and linguistic systems. Systems alignment is possible because items that share similar visual contexts, such as a car and a truck, will also tend to share similar linguistic contexts. Because of the mirrored similarity relationships across systems, the visual and linguistic systems can be aligned at some later time absent either input. In a series of simulation studies, we considered whether children's early concepts support systems alignment. We found that children's early concepts are close to optimal for inferring novel concepts through systems alignment, enabling agents to correctly infer more than 85% of visual-word mappings absent supervision. One possible explanation for why children's early concepts support systems alignment is that they are distinguished structurally by their dense semantic neighborhoods. Artificial agents using these structural features to select concepts proved highly effective, both in environments mirroring children's conceptual world and those that exclude the concepts that children commonly acquire. For children, systems alignment and event-based learning likely complement one another. Likewise, artificial systems can benefit from incorporating these developmental principles.

摘要

无论是有监督的还是无监督的,人类和机器学习通常都以事件为特征。然而,学习也可以通过系统对齐进行,在这种对齐中,整个系统(如视觉和语言系统)之间可以推断出映射。系统对齐是可能的,因为具有相似视觉背景的项目,如汽车和卡车,也将倾向于具有相似的语言背景。由于系统之间存在镜像相似关系,因此在没有输入的情况下,视觉和语言系统可以在稍后的时间进行对齐。在一系列模拟研究中,我们考虑了儿童的早期概念是否支持系统对齐。我们发现,儿童的早期概念非常适合通过系统对齐来推断新的概念,使代理能够在没有监督的情况下正确推断出超过 85%的视觉-单词映射。儿童的早期概念支持系统对齐的一个可能解释是,它们在结构上通过密集的语义邻域来区分。使用这些结构特征选择概念的人工代理在模拟儿童概念世界的环境和排除儿童通常获得的概念的环境中都非常有效。对于儿童来说,系统对齐和基于事件的学习可能相互补充。同样,人工系统也可以从纳入这些发展原则中受益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a3e4/10589699/6ca3fcd3e8e3/pnas.2309688120fig01.jpg

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