神经学证据表明,人类会重复使用策略来解决新任务。

IF 9.8 1区 生物学 Q1 Agricultural and Biological Sciences
PLoS Biology Pub Date : 2025-06-05 eCollection Date: 2025-06-01 DOI:10.1371/journal.pbio.3003174
Sam Hall-McMaster, Momchil S Tomov, Samuel J Gershman, Nicolas W Schuck
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引用次数: 0

摘要

从过去的经验中泛化是智能系统的一个重要特征。当面对一个新任务时,一种有效的计算方法是评估早期任务的解决方案作为重用的候选者。与这一观点一致,我们发现人类参与者(n = 38)学习了一组训练任务的最佳解决方案,并以奖励选择的方式将其推广到新的测试任务中。这种行为与基于后继特征和广义策略改进(SF&GPI)的后继表示的计算过程一致。无论是无模型的坚持还是使用完整环境模型的基于模型的控制都不能解释选择行为。功能性磁共振成像数据的解码显示,SF&GPI算法的解决方案在视觉和前额叶皮层的测试任务中被激活。这种激活与行为有功能上的联系,因为视觉区域中SF&GPI解决方案的更强激活与行为重用的增加有关。这些发现指出了一种可能的神经实现跨任务泛化的自适应算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural evidence that humans reuse strategies to solve new tasks.

Generalization from past experience is an important feature of intelligent systems. When faced with a new task, one efficient computational approach is to evaluate solutions to earlier tasks as candidates for reuse. Consistent with this idea, we found that human participants (n = 38) learned optimal solutions to a set of training tasks and generalized them to novel test tasks in a reward-selective manner. This behavior was consistent with a computational process based on the successor representation known as successor features and generalized policy improvement (SF&GPI). Neither model-free perseveration or model-based control using a complete model of the environment could explain choice behavior. Decoding from functional magnetic resonance imaging data revealed that solutions from the SF&GPI algorithm were activated on test tasks in visual and prefrontal cortex. This activation had a functional connection to behavior in that stronger activation of SF&GPI solutions in visual areas was associated with increased behavioral reuse. These findings point to a possible neural implementation of an adaptive algorithm for generalization across tasks.

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来源期刊
PLoS Biology
PLoS Biology BIOCHEMISTRY & MOLECULAR BIOLOGY-BIOLOGY
CiteScore
15.40
自引率
2.00%
发文量
359
审稿时长
3-8 weeks
期刊介绍: PLOS Biology is the flagship journal of the Public Library of Science (PLOS) and focuses on publishing groundbreaking and relevant research in all areas of biological science. The journal features works at various scales, ranging from molecules to ecosystems, and also encourages interdisciplinary studies. PLOS Biology publishes articles that demonstrate exceptional significance, originality, and relevance, with a high standard of scientific rigor in methodology, reporting, and conclusions. The journal aims to advance science and serve the research community by transforming research communication to align with the research process. It offers evolving article types and policies that empower authors to share the complete story behind their scientific findings with a diverse global audience of researchers, educators, policymakers, patient advocacy groups, and the general public. PLOS Biology, along with other PLOS journals, is widely indexed by major services such as Crossref, Dimensions, DOAJ, Google Scholar, PubMed, PubMed Central, Scopus, and Web of Science. Additionally, PLOS Biology is indexed by various other services including AGRICOLA, Biological Abstracts, BIOSYS Previews, CABI CAB Abstracts, CABI Global Health, CAPES, CAS, CNKI, Embase, Journal Guide, MEDLINE, and Zoological Record, ensuring that the research content is easily accessible and discoverable by a wide range of audiences.
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