Eight-month-old Infants meta-learn by downweighting irrelevant evidence
Publication year
2023Number of pages
15 p.
Source
Open Mind, 7, (2023), pp. 141-155ISSN
Publication type
Article / Letter to editor
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Organization
SW OZ DCC CO
SW OZ DCC SMN
SW OZ DCC AI
Journal title
Open Mind
Volume
vol. 7
Languages used
English (eng)
Page start
p. 141
Page end
p. 155
Subject
Action, intention, and motor control; Cognitive artificial intelligenceAbstract
Infants learn to navigate the complexity of the physical and social world at an outstanding pace, but how they accomplish this learning is still largely unknown. Recent advances in human and artificial intelligence research propose that a key feature to achieving quick and efficient learning is meta-learning, the ability to make use of prior experiences to learn how to learn better in the future. Here we show that 8-month-old infants successfully engage in meta-learning within very short timespans after being exposed to a new learning environment. We developed a Bayesian model that captures how infants attribute informativity to incoming events, and how this process is optimized by the meta-parameters of their hierarchical models over the task structure. We fitted the model with infants’ gaze behavior during a learning task. Our results reveal how infants actively use past experiences to generate new inductive biases that allow future learning to proceed faster.
This item appears in the following Collection(s)
- Academic publications [246165]
- Electronic publications [133717]
- Faculty of Social Sciences [30430]
- Open Access publications [107229]
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