预测性大脑的深度和层次:从反应到行动。

IF 3.2 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Wiley Interdisciplinary Reviews-Cognitive Science Pub Date : 2023-11-01 Epub Date: 2023-07-30 DOI:10.1002/wcs.1664
Otto Muzik, Vaibhav A Diwadkar
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引用次数: 0

摘要

人类的大脑是一个预测装置,这一观点在神经科学中被广泛接受。预测是一种理性而有效的反应,它依赖于大脑创造和使用生成模型的能力,以在不可预测的时间范围内优化行动。我们认为,现有的预测框架虽然引人注目,但没有明确说明以下几点:(a)大脑的生成模型必须包含预测深度(即依靠抽象程度来实现不同时间范围的预测);(b)大脑用于解释不同预测深度的实现方案依赖于使用大脑功能网络形成的动态预测层次。我们表明,这些层次结构包含上升过程(由反应驱动)和下降过程(与预测相关),最终驱动行动。因为它们是动态形成的,预测层次结构允许大脑在几乎任何领域应对预测挑战。通过应用的方式,我们解释了这个框架如何应用于迄今为止知之甚少的人类行为体温调节过程。尽管哺乳动物的体温调节与参与自主控制的深层大脑结构(如下丘脑)密切相关,但这种狭隘的概念并不适用于人类。除了进化史上的深刻差异之外,人类大脑还被赋予了大大增加的功能复杂性(这本身就是从进化差异中产生的)。我们认为,人类的行为体温调节是可能的,因为(a)由稳态子网络形成的上升信号与(b)与预测(在内感受和执行子网络中实现)和行动(在执行子网络中实现)相关的下降信号相插入。这些子网络累积形成了人类体温调节的预测层次结构,增强了对已知和未知体温调节挑战的一系列可行反应。我们认为,我们提出的对预测框架的扩展提供了一套可推广的原则,可以进一步阐明预测大脑的许多方面。本文分类如下:神经科学b>行为哲学>行动心理学>预测。
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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Depth and hierarchies in the predictive brain: From reaction to action.
The human brain is a prediction device, a view widely accepted in neuroscience. Prediction is a rational and efficient response that relies on the brain's ability to create and employ generative models to optimize actions over unpredictable time horizons. We argue that extant predictive frameworks while compelling, have not explicitly accounted for the following: (a) The brain's generative models must incorporate predictive depth (i.e., rely on degrees of abstraction to enable predictions over different time horizons); (b) The brain's implementation scheme to account for varying predictive depth relies on dynamic predictive hierarchies formed using the brain's functional networks. We show that these hierarchies incorporate the ascending processes (driven by reaction), and the descending processes (related to prediction), eventually driving action. Because they are dynamically formed, predictive hierarchies allow the brain to address predictive challenges in virtually any domain. By way of application, we explain how this framework can be applied to heretofore poorly understood processes of human behavioral thermoregulation. Although mammalian thermoregulation has been closely tied to deep brain structures engaged in autonomic control such as the hypothalamus, this narrow conception does not translate well to humans. In addition to profound differences in evolutionary history, the human brain is bestowed with substantially increased functional complexity (that itself emerged from evolutionary differences). We argue that behavioral thermoregulation in humans is possible because, (a) ascending signals shaped by homeostatic sub-networks, interject with (b) descending signals related to prediction (implemented in interoceptive and executive sub-networks) and action (implemented in executive sub-networks). These sub-networks cumulatively form a predictive hierarchy for human thermoregulation, potentiating a range of viable responses to known and unknown thermoregulatory challenges. We suggest that our proposed extensions to the predictive framework provide a set of generalizable principles that can further illuminate the many facets of the predictive brain. This article is categorized under: Neuroscience > Behavior Philosophy > Action Psychology > Prediction.
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CiteScore
7.30
自引率
7.70%
发文量
50
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