IV. Ecosmomics: An Independent Source Script of Generative, Self-Similar, Complex Network Systems
1. Network Physics: A Vital Anatomy and Physiology
Kleineberg, Kij-Kolja, et al. Hidden Geometric Correlations in Real Multiplex Networks. Nature Physics. 12/11, 2016. University of Barcelona and Cyprus University of Technology researchers including Martin Boguna tease out nature’s intricate orderliness by way of deeply persistent topological interconnections. In this regard, such phenomena serves as an independent source which becomes exemplified in kind across every cosmos to creature scale and instance.
Real networks often form interacting parts of larger and more complex systems. Examples can be found in different domains, ranging from the Internet to structural and functional brain networks. Here, we show that these multiplex systems are not random combinations of single network layers. Instead, they are organized in specific ways dictated by hidden geometric correlations between the layers. We find that these correlations are significant in different real multiplexes, and form a key framework for answering many important questions. Specifically, we show that these geometric correlations facilitate the definition and detection of multidimensional communities, which are sets of nodes that are simultaneously similar in multiple layers. They also enable accurate trans-layer link prediction, meaning that connections in one layer can be predicted by observing the hidden geometric space of another layer. And they allow efficient targeted navigation in the multilayer system using only local knowledge, outperforming navigation in the single layers only if the geometric correlations are sufficiently strong. (Abstract)
Klimm, Florian, et al. Individual Node’s Contribution to the Mesoscale of Complex Networks. New Journal of Physics. 16/125006, 2014. After much identification and study of modules, hubs, and communities in living, interconnective systems, Humboldt University, Qatar Computing Research Institute, and Universitat Pompeu Fabra, Barcelona researchers including Jurgen Kurths, can now technically describe the place, importance and contribution of each discrete node, element, entity, in their relative dynamic network setting.
The analysis of complex networks is devoted to the statistical characterization of the topology of graphs at different scales of organization in order to understand their functionality. While the modular structure of networks has become an essential element to better apprehend their complexity, the efforts to characterize the mesoscale of networks have focused on the identification of the modules rather than describing the mesoscale in an informative manner. Here we propose a framework to characterize the position every node takes within the modular configuration of complex networks and to evaluate their function accordingly. For illustration, we apply this framework to a set of synthetic networks, empirical neural networks, and to the transcriptional regulatory network of the Mycobacterium tuberculosis. We find that the architecture of both neuronal and transcriptional networks are optimized for the processing of multisensory information with the coexistence of well-defined modules of specialized components and the presence of hubs conveying information from and to the distinct functional domains. (Abstract)
Kojaku, Sadamori and Naoki Masuda. Finding Multiple Core-Periphery Pairs in Networks. arXiv:1702.06903. University of Bristol engineering mathematicians describe this common topological phenomena (search Porter) and then evince its presence across social, infrastructure and political settings.
With a core-periphery structure of networks, core nodes are densely interconnected, peripheral nodes are connected to core nodes to different extents, and peripheral nodes are sparsely interconnected. Core-periphery structure composed of a single core and periphery has been identified for various networks. However, analogous to the observation that many empirical networks are composed of densely interconnected groups of nodes, i.e., communities, a network may be better regarded as a collection of multiple cores and peripheries. For example, we find distinct core-periphery pairs with different political leanings in a network of political blogs and separation between international and domestic subnetworks of airports in some single countries in a world-wide airport network. (Abstract)
Kostic, Daniel. Mechanistic and Topological Explanations. Synthese. 195/1, 2018. An introduction by a University of Paris Sorbonne scholar to this special issue, coedited by DK and Philip Huneman. We earlier entered in 2016 Kostic’s full paper, The Topological Realization, online in 2016, which argued that this current relational, network turn need be given a proper philosophical appreciation. With a notice of gene regulatory, physiological, neural nets, and more it is averred that such a basis is vital so to move beyond a prior particulate emphasis. See also herein Diversifying the Picture of Explanations in Biological Sciences by P. Huneman, Mechanisms Meet Structural Explanation by Laura Felline, and Network Representation and Complex Systems by Charles Rathkopf.
Kostic, Daniel. The Topological Realization. Synthese. Online October, 2016. A University of Paris philosopher attempts to give full notice to these heretofore unappreciated interconnective, network structural properties of natural and social systems, along with their prior nodal, discrete components. The special Synthese issue this paper is included in is now available as 195/1 January 2018, search DK for his Introduction and its contents.
In this paper, I argue that the newly developed network approach in neuroscience and biology provides a basis for formulating a unique type of realization, which I call topological realization. Some of its features and its relation to one of the dominant paradigms in the sciences, i.e. the mechanistic one, are already being discussed in the literature. But the detailed features of topological realization, its explanatory power and its relation to another prominent view, namely the semantic one, have not yet been discussed. I argue that topological realization is distinct from mechanistic and semantic ones because this framework is not based on local realisers, regardless of the scale but on global realizers. Furthermore, topological realization enables us to answer the “why” questions, which make it explanatory. (Edited Abstract)
Kostic, Daniel, et al. Unifying the Essential Concepts of Biological Networks. Philosophical Transactions of the Royal Society B. February, 2020. DR, University of Bordeaux, Claus Hilgetaf, University Medical Center Hamburg, and Marc Tittgemeyer, MPI Metabolism Research introduce a special issue with this integrative title. Its content is composed of both life science and philosophical considerations since both views need join together. For example, see General Theory of Topological Explanations and Explanatory Asymmetry by D. Kostic, Hierarchy and Levels by William Bechtel, Exploring Modularity by Maria Serban, and Network Architectures Supporting Learnability by Perry Zurn and Danielle Bassett, From Inert Matter to Global Society by David Chavalarias and Evolving Complexity by Richard Sole and Sergi Valverde (search for these last three).
Over the last decades, network-based approaches have become highly popular in diverse fields of biology, including neuroscience, ecology, molecular biology and genetics. While these approaches continue to grow very rapidly, some of their conceptual and methodological aspects still require a programmatic foundation. This challenge particularly concerns the question of whether a generalized account of explanatory, organizational and descriptive levels of networks can be applied universally across biological sciences. To this end, this highly interdisciplinary theme issue focuses on the definition, motivation and application of key concepts in biological network science, such as explanatory power of distinctively network explanations, network levels and network hierarchies. (Abstract)
Kovacs, Istvan, et al. Community Landscapes: An Integrative Approach to Determine Overlapping Network Module Hierarchy, Identify Key Nodes and Predict Network Dynamics. PLoS One. 5/9, 2010. Cited more in Common Code, in this 100 page entry with bioinformatic programs and references, Semmelweis University, Budapest, living system scientists, including Peter Csermely, parse modular networks to uncover a ubiquitous topological feature. Indeed, nature seems intent on forming communal groupings of an appropriate size and populace at each and every strata and instance. Might one even broach an “ubuntu Universe.”
Krioukov, Dmitri, et al. Network Cosmology. Nature Scientific Reports. 2/793, 2012. . On occasion, a paper comes along of such unique, meritous content that it bodes for a significant breakthrough and synthesis. A team of five University of California, San Diego, systems scientists with Marian Boguna, a University of Barcelona physicist, proceed via sophisticated quantifications to discern the same nonlinear dynamics that infuse from proteins to cities within celestial topological networks. Its technical acumen and depth requires several excerpts. For example, Figure 2, “Mapping between the de Sitter universe and complex networks” illustrates many isomorphic affinities. As per Figure 4, “Degree distribution and clustering in complex networks and space time,” Internet, social network, brain anatomy, and hyperbolic spatial lineaments all graph on the same line, indicating common node and link geometries. As the quotes allude, a grand unification of universe, life, cognition, and humankind could be in the offing, a nascent witness of a biological genesis uniVerse.
Kumpula, Jussi, et al. Emergence of Communities in Weighted Networks. Physics Review Letters. 99/228701, 2007. As scale-free networks grow in intricacy, they reveal an inherent propensity to form modular and communal topologies. This “quite general paradigm” is then evident across a nested nature from metabolic to neural to societal systems, each amenable to this common physical explanation. And one might add, what is implied by such findings is an organic developing cosmos.
Network theory has undergone a remarkable development over the last decade and has contributed significantly to our understanding of complex systems, ranging from genetic transcriptions to the Internet and human societies. (228701-1) Understanding how the microscopic mechanisms translate into mesoscopic communities and macroscopic social systems is a key problem in its own right and one that is accessible within the scope of statistical physics. (228701-1)
Laurent, Hebert-Dufresne, et al. Complex Networks as an Emerging Property of Hierarchical Preferential Attachment. Physical Review E. 92/6, 2015. Cited also in Universality Affirmations, University of Laval, Quebec and University of Barcelona physicists open this survey on the state of complexity science by tracing its advent to a 1962 paper The Architecture of Complexity by the pioneer theorist Herbert Simon in the Proceedings of the American Philosophical Society (106/467). Some half century later, as this 2015 section documents, the Grail goal of one, same, infinitely iterated, self-organizing system has been proven from quantum to human to cosmic realms, so as to imply a common, independent, universally manifest, source.
Laurienti, Paul, et al. Universal Fractal Scaling of Self-Organized Networks. Physica A. 390/20, 2011. Cited more in Common Code, after some two decades of complex systems studies from every angle, in disparate fields and terms, on every continent, a maturity is lately being reached so it is possible, for example, for this team of Wake Forest University biomedical researchers to propose a natural “universality” of “node and interaction” dynamic network phenomena. To wit, the same fractal pattern and process faithfully recurs across broad Biological, Information, Social, and Technological domains. These extended quotes might portend, circa 2011, a new animate nature suffused with intrinsic creativities that repeat and reiterate across every regnant realm. At what point, and by what insight, might this realization become a revolution, and its spontaneity be appreciated as genetic in kind?
Lee, Kyu-Min, et al. Towards Real-World Complexity: An Introduction to Multiplex Networks. European Physical Journal B. 88/2, 2015. In this edition for Condensed Matter and Complex Systems, Korea University physicists offer a succinct tutorial for these novel findings of a lively nature from cosmos to cerebral to culture as graced by nested networks in iterative hierarchies. With statistical and nonlinear physics as Keywords, the paper joins a mid 2010s revolution from mechanical particles only to pervasive animate, neural interconnections, whose latest epitome of human persons and societies is able to achieve its own vital self-realization.
Many real-world complex systems are best modeled by multiplex networks of interacting network layers. The multiplex network study is one of the newest and hottest themes in the statistical physics of complex networks. Pioneering studies have proven that the multiplexity has broad impact on the system’s structure and function. In this Colloquium paper, we present an organized review of the growing body of current literature on multiplex networks by categorizing existing studies broadly according to the type of layer coupling in the problem. Major recent advances in the field are surveyed and some outstanding open challenges and future perspectives will be proposed. (Abstract)