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1
Abstract representations of events arise from mental errors in learning and memory.事件的抽象表示源于学习和记忆中的思维错误。
Nat Commun. 2020 May 8;11(1):2313. doi: 10.1038/s41467-020-15146-7.
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The successor representation in human reinforcement learning.人类强化学习中的后继表示
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Network constraints on learnability of probabilistic motor sequences.网络对概率运动序列可学习性的约束。
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Knowledge gaps in the early growth of semantic feature networks.语义特征网络早期发展中的知识空白。
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Individual differences in learning social and nonsocial network structures.学习社会和非社会网络结构中的个体差异。
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Process reveals structure: How a network is traversed mediates expectations about its architecture.过程揭示结构:网络的遍历方式如何影响对其结构的预期。
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Quantifying the structure of free association networks across the life span.量化整个生命周期中自由联想网络的结构。
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A map of abstract relational knowledge in the human hippocampal-entorhinal cortex.人类海马体-内嗅皮层中的抽象关系知识图谱。
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Brain networks for confidence weighting and hierarchical inference during probabilistic learning.概率学习过程中用于置信加权和层次推理的脑网络。
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人类如何学习和表示网络。

How humans learn and represent networks.

机构信息

Department of Physics & Astronomy, College of Arts & Sciences, University of Pennsylvania, Philadelphia, PA 19104.

Department of Physics & Astronomy, College of Arts & Sciences, University of Pennsylvania, Philadelphia, PA 19104;

出版信息

Proc Natl Acad Sci U S A. 2020 Nov 24;117(47):29407-29415. doi: 10.1073/pnas.1912328117.

DOI:10.1073/pnas.1912328117
PMID:33229528
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7703562/
Abstract

Humans receive information from the world around them in sequences of discrete items—from words in language or notes in music to abstract concepts in books and websites on the Internet. To model their environment, from a young age people are tasked with learning the network structures formed by these items (nodes) and the connections between them (edges). But how do humans uncover the large-scale structures of networks when they experience only sequences of individual items? Moreover, what do people’s internal maps and models of these networks look like? Here, we introduce graph learning, a growing and interdisciplinary field studying how humans learn and represent networks in the world around them. Specifically, we review progress toward understanding how people uncover the complex webs of relationships underlying sequences of items. We begin by describing established results showing that humans can detect fine-scale network structure, such as variations in the probabilities of transitions between items. We next present recent experiments that directly control for differences in transition probabilities, demonstrating that human behavior depends critically on the mesoscale and macroscale properties of networks. Finally, we introduce computational models of human graph learning that make testable predictions about the impact of network structure on people’s behavior and cognition. Throughout, we highlight open questions in the study of graph learning that will require creative insights from cognitive scientists and network scientists alike.

摘要

人类通过离散的项目序列(从语言中的单词到音乐中的音符,再到书籍和互联网网站中的抽象概念)接收来自周围世界的信息。为了对环境建模,人们从小就被要求学习这些项目(节点)和它们之间的连接(边)形成的网络结构。但是,当人们只经历单个项目的序列时,他们如何发现网络的大规模结构呢?此外,人们对这些网络的内部地图和模型是什么样子的?在这里,我们介绍图学习,这是一个不断发展和跨学科的领域,研究人类如何在周围的世界中学习和表示网络。具体来说,我们回顾了理解人们如何揭示项目序列背后复杂关系网络的进展。我们首先描述了已确立的结果,表明人类可以检测到精细的网络结构,例如项目之间转换概率的变化。接下来,我们展示了直接控制转换概率差异的最新实验,证明了人类行为取决于网络的中尺度和大尺度特性。最后,我们介绍了人类图学习的计算模型,这些模型对网络结构对人们行为和认知的影响做出了可测试的预测。整篇文章都强调了图学习研究中的开放性问题,这些问题需要认知科学家和网络科学家的创造性见解。