2021
DOI: 10.3390/app11125736
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Complex Systems, Emergence, and Multiscale Analysis: A Tutorial and Brief Survey

Abstract: Mankind has long been fascinated by emergence in complex systems. With the rapidly accumulating big data in almost every branch of science, engineering, and society, a golden age for the study of complex systems and emergence has arisen. Among the many values of big data are to detect changes in system dynamics and to help science to extend its reach, and most desirably, to possibly uncover new fundamental laws. Unfortunately, these goals are hard to achieve using black-box machine-learning based approaches fo… Show more

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Cited by 8 publications
(9 citation statements)
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“…The question of the emergence of cognitive behaviour is not one of scaling up from micro to macro levels, but rather concerns the reciprocal and complex relations between these levels (Funtowicz and Ravetz, 1994;Gao and Xu, 2021). This means that micro-level neurobiological processes both influence and are influenced by macro-level agency, as an embodied agency at the macro-level influences and is influenced by micro-level neurobiology.…”
Section: Emergencementioning
confidence: 99%
“…The question of the emergence of cognitive behaviour is not one of scaling up from micro to macro levels, but rather concerns the reciprocal and complex relations between these levels (Funtowicz and Ravetz, 1994;Gao and Xu, 2021). This means that micro-level neurobiological processes both influence and are influenced by macro-level agency, as an embodied agency at the macro-level influences and is influenced by micro-level neurobiology.…”
Section: Emergencementioning
confidence: 99%
“…This strategy, however, is not feasible; instead, we suggest relying on the fundamental embedding theorem of chaos theory, which states that the detailed dynamics of a system that has an underlying attractor can be readily studied by reconstructing a suitable phase space of a scalar time series recorded from the system [ 13 15 ]. Chaos theory offers an elaborate scheme for generating aperiodic, highly irregular data from a deterministic system that can be characterized by only very few state variables instead of a random system with infinite numbers of degrees of freedom [ 16 ]. While the evolution of a complex social system may not be modeled as a dynamical system with a single attractor, we can assume that the dynamics of a large-scale social system can be approximated by switching between a large number of attractors, some of which may be simple, such as fixed points that may be associated with the dynamics of cultural information, while others may be complicated, including chaotic attractors [ 17 , 18 ].…”
Section: Introductionmentioning
confidence: 99%
“…4 Meanwhile, the ubiquitous nature of big data across many fields, including biology, as well as advancements in computation have led to the emergence of many complex networks, the primary goals of which include modeling and understanding real, complex systems. 5,6 Special properties, such as being small-world 7 and scale-free, 8 are key indicators of complex networks, 9 where the former is the value derived when the average path length scales logarithmically and when the clustering coefficient is higher than the random network of the same size. 10 Conversely, the latter is a functional form that cannot be changed in a multiplicative factor while rescaling independent variables.…”
Section: Introductionmentioning
confidence: 99%