Neural Mechanisms Behind Identification of Leptokurtic Noise and Adaptive Behavioral Response

M. d'Acremont, P. Bossaerts
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引用次数: 27

Abstract

Large-scale human interaction through, for example, financial markets causes ceaseless random changes in outcome variability, producing frequent and salient outliers that render the outcome distribution more peaked than the Gaussian distribution, and with longer tails. Here, we study how humans cope with this evolutionary novel leptokurtic noise, focusing on the neurobiological mechanisms that allow the brain, 1) to recognize the outliers as noise and 2) to regulate the control necessary for adaptive response. We used functional magnetic resonance imaging, while participants tracked a target whose movements were affected by leptokurtic noise. After initial overreaction and insufficient subsequent correction, participants improved performance significantly. Yet, persistently long reaction times pointed to continued need for vigilance and control. We ran a contrasting treatment where outliers reflected permanent moves of the target, as in traditional mean-shift paradigms. Importantly, outliers were equally frequent and salient. There, control was superior and reaction time was faster. We present a novel reinforcement learning model that fits observed choices better than the Bayes-optimal model. Only anterior insula discriminated between the 2 types of outliers. In both treatments, outliers initially activated an extensive bottom-up attention and belief network, followed by sustained engagement of the fronto-parietal control network.
细峰噪声识别和适应性行为反应背后的神经机制
例如,通过金融市场进行的大规模人类互动导致了结果可变性的不断随机变化,产生了频繁而显著的异常值,使结果分布比高斯分布更具峰值性,并且具有更长的尾部。在这里,我们研究人类如何应对这种进化上的新型细峰噪声,重点关注大脑的神经生物学机制,1)将异常值识别为噪声,2)调节适应性反应所需的控制。我们使用功能性磁共振成像,让参与者追踪一个运动受到细峰噪声影响的目标。在最初的过度反应和随后的纠正不足后,参与者的表现显著提高。然而,持续较长的反应时间表明,仍然需要保持警惕和控制。我们进行了对比处理,其中异常值反映了目标的永久移动,就像在传统的均值转移范式中一样。重要的是,异常值同样频繁和显著。在那里,控制是优越的,反应时间更快。我们提出了一种新的强化学习模型,它比贝叶斯最优模型更适合观察到的选择。只有前岛区分两类异常值。在这两种治疗中,异常值最初激活了广泛的自下而上的注意力和信念网络,随后持续参与额顶叶控制网络。
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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