Quantifying causal emergence shows that macro can beat micro.

IF 9.4 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Proceedings of the National Academy of Sciences of the United States of America Pub Date : 2013-12-03 Epub Date: 2013-11-18 DOI:10.1073/pnas.1314922110
Erik P Hoel, Larissa Albantakis, Giulio Tononi
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引用次数: 216

Abstract

Causal interactions within complex systems can be analyzed at multiple spatial and temporal scales. For example, the brain can be analyzed at the level of neurons, neuronal groups, and areas, over tens, hundreds, or thousands of milliseconds. It is widely assumed that, once a micro level is fixed, macro levels are fixed too, a relation called supervenience. It is also assumed that, although macro descriptions may be convenient, only the micro level is causally complete, because it includes every detail, thus leaving no room for causation at the macro level. However, this assumption can only be evaluated under a proper measure of causation. Here, we use a measure [effective information (EI)] that depends on both the effectiveness of a system's mechanisms and the size of its state space: EI is higher the more the mechanisms constrain the system's possible past and future states. By measuring EI at micro and macro levels in simple systems whose micro mechanisms are fixed, we show that for certain causal architectures EI can peak at a macro level in space and/or time. This happens when coarse-grained macro mechanisms are more effective (more deterministic and/or less degenerate) than the underlying micro mechanisms, to an extent that overcomes the smaller state space. Thus, although the macro level supervenes upon the micro, it can supersede it causally, leading to genuine causal emergence--the gain in EI when moving from a micro to a macro level of analysis.

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量化因果产生表明宏观可以打败微观。
复杂系统中的因果相互作用可以在多个空间和时间尺度上进行分析。例如,大脑可以在神经元、神经元群和区域的水平上进行分析,时间跨度为几十毫秒、几百毫秒或几千毫秒。人们普遍认为,一旦微观层面固定了,宏观层面也就固定了,这种关系被称为“亲缘关系”。我们还假设,尽管宏观描述可能很方便,但只有微观层面的因果关系是完整的,因为它包含了每一个细节,因此没有给宏观层面的因果关系留下空间。然而,这种假设只能在适当的因果关系测量下进行评估。在这里,我们使用一种度量[有效信息(EI)],它取决于系统机制的有效性及其状态空间的大小:EI越高,机制对系统可能的过去和未来状态的约束越多。通过在微观机制固定的简单系统中测量微观和宏观层面的EI,我们表明,对于某些因果结构,EI可以在空间和/或时间的宏观层面上达到峰值。当粗粒度的宏观机制比底层的微观机制更有效(更具确定性和/或更少退化)时,就会出现这种情况,在一定程度上克服了较小的状态空间。因此,尽管宏观层面是微观层面的叠加,但它可以在因果关系上取代微观层面,从而导致真正的因果出现——当从微观分析转向宏观分析时,EI的收益。
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来源期刊
CiteScore
19.00
自引率
0.90%
发文量
3575
审稿时长
2.5 months
期刊介绍: The Proceedings of the National Academy of Sciences (PNAS), a peer-reviewed journal of the National Academy of Sciences (NAS), serves as an authoritative source for high-impact, original research across the biological, physical, and social sciences. With a global scope, the journal welcomes submissions from researchers worldwide, making it an inclusive platform for advancing scientific knowledge.
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