首页> 外文期刊>Nature Communications >Transferring structural knowledge across cognitive maps in humans and models
【24h】

Transferring structural knowledge across cognitive maps in humans and models

机译:在人类和模型中转移跨认知地图的结构知识

获取原文
       

摘要

Relations between task elements often follow hidden underlying structural forms such as periodicities or hierarchies, whose inferences fosters performance. However, transferring structural knowledge to novel environments requires flexible representations that are generalizable over particularities of the current environment, such as its stimuli and size. We suggest that humans represent structural forms as abstract basis sets and that in novel tasks, the structural form is inferred and the relevant basis set is transferred. Using a computational model, we show that such representation allows inference of the underlying structural form, important task states, effective behavioural policies and the existence of unobserved state-trajectories. In two experiments, participants learned three abstract graphs during two successive days. We tested how structural knowledge acquired on Day-1 affected Day-2 performance. In line with our model, participants who had a correct structural prior were able to infer the existence of unobserved state-trajectories and appropriate behavioural policies. Humans are able to exploit patterns or schemas when performing new tasks, but the mechanism for this ability is still unknown. Using graph-learning tasks, we show that humans are able to transfer abstract structural knowledge and suggest a computational mechanism by which such transfer can occur.
机译:任务元素之间的关系通常遵循隐藏的基础结构形式,如周期或层次结构,其推论促进了性能。然而,将结构知识转移到新颖的环境需要灵活的表示,这是完全通过当前环境的特殊性,例如其刺激和尺寸。我们建议人类代表结构形式作为抽象基础集,在新的任务中,可以推断结构形式,并转移相关的基础集。使用计算模型,我们表明这种代表允许推动潜在的结构形式,重要的任务状态,有效的行为政策以及未​​观察到的状态轨迹的存在。在两个实验中,参与者在两次连续两天内学习了三个抽象图。我们测试了如何在DAY-1受影响的天2性能上获得的结构知识。符合我们的模型,具有正确结构的参与者能够推断出不观察到的国家轨迹和适当的行为政策。人类能够在执行新任务时利用模式或模式,但这种能力的机制仍然是未知的。使用图形学习任务,我们表明人类能够转移抽象的结构知识并提出可能发生这种转移的计算机制。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号