Structure from noise: Mental errors yield abstract representations of events

Christopher W. Lynn, Ari E. Kahn, D. Bassett
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引用次数: 8

Abstract

Humans are adept at uncovering complex associations in the world around them, yet the underlying mechanisms remain poorly understood. Intuitively, learning the higher-order structure of statistical relationships should involve sophisticated mental processes, expending valuable computational resources. Here we propose a competing perspective: that higher-order associations actually arise from natural errors in learning. Combining ideas from information theory and reinforcement learning, we derive a novel maximum entropy model of people's internal expectations about the transition structures underlying sequences of ordered events. Importantly, our model analytically accounts for previously unexplained network effects on human expectations and quantitatively describes human reaction times in probabilistic sequential motor tasks. Additionally, our model asserts that human expectations should depend critically on the different topological scales in a transition network, a prediction that we subsequently test and validate in a novel experiment. Generally, our results highlight the important role of mental errors in shaping abstract representations, and directly inspire new physically-motivated models of human behavior.
来自噪音的结构:心理错误产生事件的抽象表征
人类善于发现周围世界的复杂联系,但其潜在机制仍然知之甚少。直观地说,学习统计关系的高阶结构应该涉及复杂的心理过程,消耗宝贵的计算资源。在这里,我们提出了一个竞争性的观点:高阶联想实际上是由学习中的自然错误产生的。结合信息论和强化学习的思想,我们推导了一个新的最大熵模型,该模型描述了人们对有序事件序列下的过渡结构的内部期望。重要的是,我们的模型分析地解释了先前无法解释的网络效应对人类期望的影响,并定量地描述了人类在概率顺序运动任务中的反应时间。此外,我们的模型断言,人类的期望应该严格依赖于过渡网络中的不同拓扑尺度,我们随后在一个新的实验中测试和验证了这一预测。总的来说,我们的研究结果强调了心理错误在塑造抽象表征中的重要作用,并直接启发了新的人类行为物理动机模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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