Passive exposure to task-relevant stimuli enhances categorization learning.
Autor: | Schmid C; Institute of Neuroscience, University of Oregon, Eugene, United States., Haziq M; Institute of Neuroscience, University of Oregon, Eugene, United States., Baese-Berk MM; Department of Linguistics, University of Oregon, Eugene, United States., Murray JM; Institute of Neuroscience, University of Oregon, Eugene, United States., Jaramillo S; Institute of Neuroscience, University of Oregon, Eugene, United States. |
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Jazyk: | angličtina |
Zdroj: | ELife [Elife] 2024 Jan 24; Vol. 12. Date of Electronic Publication: 2024 Jan 24. |
DOI: | 10.7554/eLife.88406 |
Abstrakt: | Learning to perform a perceptual decision task is generally achieved through sessions of effortful practice with feedback. Here, we investigated how passive exposure to task-relevant stimuli, which is relatively effortless and does not require feedback, influences active learning. First, we trained mice in a sound-categorization task with various schedules combining passive exposure and active training. Mice that received passive exposure exhibited faster learning, regardless of whether this exposure occurred entirely before active training or was interleaved between active sessions. We next trained neural-network models with different architectures and learning rules to perform the task. Networks that use the statistical properties of stimuli to enhance separability of the data via unsupervised learning during passive exposure provided the best account of the behavioral observations. We further found that, during interleaved schedules, there is an increased alignment between weight updates from passive exposure and active training, such that a few interleaved sessions can be as effective as schedules with long periods of passive exposure before active training, consistent with our behavioral observations. These results provide key insights for the design of efficient training schedules that combine active learning and passive exposure in both natural and artificial systems. Competing Interests: CS, MH, MB, JM, SJ No competing interests declared (© 2023, Schmid, Haziq et al.) |
Databáze: | MEDLINE |
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