Complexity Digest
@cxdig.bsky.social
230 followers 140 following 140 posts
Networking the complexity community since 1999. Official news channel of the @cssociety.bsky.social Edited by @cgershen.bsky.social
Posts Media Videos Starter Packs
cxdig.bsky.social
Automating the Search for Artificial Life With Foundation Models
Automating the Search for Artificial Life With Foundation Models
Akarsh Kumar, Chris Lu, Louis Kirsch, Yujin Tang, Kenneth O. Stanley, Phillip Isola, David Ha Artificial Life (2025) 31 (3): 368–396. With the recent Nobel Prize awarded for radical advances in protein discovery, foundation models (FMs) for exploring large combinatorial spaces promise to revolutionize many scientific fields. Artificial Life (ALife) has not yet integrated FMs, thus presenting a major opportunity for the field to alleviate the historical burden of relying chiefly on manual design and trial and error to discover the configurations of lifelike simulations. This article presents, for the first time, a successful realization of this opportunity using vision-language FMs. The proposed approach, called automated search for Artificial Life (ASAL), (a) finds simulations that produce target phenomena, (b) discovers simulations that generate temporally open-ended novelty, and (c) illuminates an entire space of interestingly diverse simulations. Because of the generality of FMs, ASAL works effectively across a diverse range of ALife substrates, including Boids, Particle Life, the Game of Life, Lenia, and neural cellular automata. A major result highlighting the potential of this technique is the discovery of previously unseen Lenia and Boids life-forms, as well as cellular automata that are open-ended like Conway’s Game of Life. Additionally, the use of FMs allows for the quantification of previously qualitative phenomena in a human-aligned way. This new paradigm promises to accelerate ALife research beyond what is possible through human ingenuity alone. Read the full article at: direct.mit.edu
sco.lt
cxdig.bsky.social
Complexity, Emergence and the Evolution of Scientific Theories: Towards a Predictive Epistemology, by Miguel Fuentes
Complexity, Emergence and the Evolution of Scientific Theories: Towards a Predictive Epistemology, by Miguel Fuentes
This book offers a unique perspective on the evolution of scientific theories through the lens of their changing complexity. To explore this non-trivial connection, the author draws on well-known historical cases from the philosophy of science tradition to test the central theses of the work. At the same time, the book develops a conceptual framework in which the debates on emergence and complexity play a central role. The opening chapter provides the historical background of emergence, examining both classical and contemporary perspectives, highlighting diverse viewpoints and their contributions to the current discussion. The second chapter turns to the foundations of complexity science, detailing its key methodologies and emphasizing the role of information in describing and modeling systems. Building on this foundation, the book introduces a novel quantitative definition of emergent properties, grounded in the concept of parametric model complexity. It discusses how slight variations in control parameters can generate universal features and explores the implications of these dynamics for our understanding of systemic behavior. Finally, the author shows how this framework illuminates critical aspects of scientific practice, ranging from the criteria guiding theory choice to the relationship between technological innovation and the risk of the appearance of anomalies. By combining historical analysis, conceptual innovation, and formal modeling, the book presents a compelling vision of how complexity and emergence can be predictive indicators of theoretical transformation, recognizing the moments when our current models have reached their limits. More at: link.springer.com
sco.lt
cxdig.bsky.social
Generalizing thermodynamic efficiency of interactions: inferential, information-geometric and computational perspectives
Generalizing thermodynamic efficiency of interactions: inferential, information-geometric and computational perspectives
Qianyang Chen, Nihat Ay, Mikhail Prokopenko Self-organizing systems consume energy to generate internal order. The concept of thermodynamic efficiency, drawing from statistical physics and information theory, has previously been proposed to characterize a change in control parameter by relating the resulting predictability gain to the required amount of work. However, previous studies have taken a system-centric perspective and considered only single control parameters. Here, we generalize thermodynamic efficiency to multi-parameter settings and derive two observer-centric formulations. The first, an inferential form, relates efficiency to fluctuations of macroscopic observables, interpreting thermodynamic efficiency in terms of how well the system parameters can be inferred from observable macroscopic behaviour. The second, an information-geometric form, expresses efficiency in terms of the Fisher information matrix, interpreting it with respect to how difficult it is to navigate the statistical manifold defined by the control protocol. This observer-centric perspective is contrasted with the existing system-centric view, where efficiency is considered an intrinsic property of the system. Read the full article at: arxiv.org
sco.lt
cxdig.bsky.social
Evolutionary processes that resolve cooperative dilemmas
Evolutionary processes that resolve cooperative dilemmas
Philip LaPorte, Shiyi Wang, Lenz Pracher, Saptarshi Pal, Martin Nowak In biology, there is often a tension between what is good for the individual and what is good for the population (1–6). Cooperation benefits the community, while defection tempts the individual to garner short term gains. The theory of repeated games specifies that there is a continuum of Nash equilibria which ranges from fully defective to fully cooperative (7,8). The mechanism of direct reciprocity, which relies on repeated interactions, therefore only stipulates that evolution of cooperation is possible, but whether or not cooperation can be established, and for which parameters, depends on the details of the underlying process of mutation and selection (9–18). Many well known evolutionary processes achieve cooperation only in restricted settings. In the case of the donation game (5,6), for example, high benefit to-cost ratios are often needed for selection to favor cooperation (19–22). Here we study a universe of two-player cooperative dilemmas (23), which includes the prisoner’s dilemma (24–27), snowdrift (28–30), stag-hunt (31) and harmony game. Upon those games we apply a universe of evolutionary processes. Among those processes we find a continuous set which has the feature that it achieves maximum payoff for all cooperative dilemmas under direct reciprocity. This set is characterized by a surprisingly simple property which we call parity: competing strategies are evaluated symmetrically. Read the full article at: www.researchsquare.com
sco.lt
cxdig.bsky.social
CCS 2026: The 2026 Conference on Complex Systems @ Binghamton, NY, USA. October 9 - 16
CCS 2026: The 2026 Conference on Complex Systems @ Binghamton, NY, USA. October 9 - 16
The 2026 Conference on Complex Systems will be held in Binghamton, New York, USA. Binghamton has a long history of creativity and innovation. The Greater Binghamton area has historically been called "the Valley of Opportunity" and attracted many immigrants (especially from Europe) since the mid-1800s, which has made the region's rich and diverse culture and demographics. It is the birthplace of IBM (International Business Machines), Link Flight Simulator, McIntosh Laboratory, and a number of other pioneering ventures, fostering a spirit of ingenuity that continues to thrive. Located at the confluence of the Susquehanna river (one of the oldest rivers in the world) and the Chenango river, the region boasts stunning natural beauty and offers ample opportunities for outdoor recreation, from hiking and biking to fishing and kayaking. In particular, in mid-October when CCS 2026 is held, the Binghamton area will showcase its renowned and breathtaking fall foliage. Furthermore, a vibrant arts and culture scene flourishes here, with numerous galleries, theaters, and music venues providing enriching experiences. CCS 2026 will be held primarily in person on the main campus at Binghamton University, with an online participation option via Zoom. Read the full article at: ccs2026.github.io
sco.lt
cxdig.bsky.social
Honeybees adapt to a range of comb cell sizes by merging, tilting, and layering their construction
Honeybees adapt to a range of comb cell sizes by merging, tilting, and layering their construction
Honeybees are renowned for their skills in building intricate and adaptive combs that display notable variation in cell size. However, the extent of their adaptability in constructing honeycombs with varied cell sizes has not been thoroughly investigated. We use 3D-printing and X-ray microscopy to quantify honeybees’ capacity in adjusting the comb to different initial conditions. Our findings suggest three distinct comb construction modes in response to foundations with varying sizes of 3D-printed cells. For smaller foundations, bees occasionally merge adjacent cells to compensate for the reduced space. However, for larger cell sizes, the hive uses adaptive strategies such as tilting for foundations with cells up to twice the reference size and layering for cells that are three times larger than the reference cell. Our findings shed light on honeybees adaptive comb construction abilities, significant for the biology of self-organized collective behavior, as well as for bio-inspired engineered systems. Gharooni-Fard G, Kavaraganahalli Prasanna C, Peleg O, López Jiménez F (2025) Honeybees adapt to a range of comb cell sizes by merging, tilting, and layering their construction. PLoS Biol 23(8): e3003253. Read the full article at: journals.plos.org
sco.lt
cxdig.bsky.social
Integrated information and predictive processing theories of consciousness: An adversarial collaborative review
Integrated information and predictive processing theories of consciousness: An adversarial collaborative review
Andrew W. Corcoran, Andrew M. Haun, Reinder Dorman, Giulio Tononi, Karl J. Friston, Cyriel M. A. Pennartz, TWCF: INTREPID Consortium As neuroscientific theories of consciousness continue to proliferate, the need to assess their similarities and differences -- as well as their predictive and explanatory power -- becomes ever more pressing. Recently, a number of structured adversarial collaborations have been devised to test the competing predictions of several candidate theories of consciousness. In this review, we compare and contrast three theories being investigated in one such adversarial collaboration: Integrated Information Theory, Neurorepresentationalism, and Active Inference. We begin by presenting the core claims of each theory, before comparing them in terms of (1) the phenomena they seek to explain, (2) the sorts of explanations they avail, and (3) the methodological strategies they endorse. We then consider some of the inherent challenges of theory testing, and how adversarial collaboration addresses some of these difficulties. More specifically, we outline the key hypotheses that will be tested in this adversarial collaboration, and exemplify how contrasting empirical predictions may pertain to core and auxiliary components of each theory. Finally, we discuss how the data harvested across disparate experiments (and their replicates) may be formally integrated to provide a quantitative measure of the evidential support accrued under each theory. We suggest this approach to theory comparison may afford a useful metric for tracking the amount of scientific progress being made in consciousness research. Read the full article at: arxiv.org
sco.lt
cxdig.bsky.social
Engineering Swarms of Cyber-Physical Systems
By Melanie Schranz, Wilfried Elmenreich, Farshad Arvin
Engineering Swarms of Cyber-Physical Systems By Melanie Schranz, Wilfried Elmenreich, Farshad Arvin
Engineering Swarms for Cyber-Physical Systems covers the whole design cycle for applying swarm intelligence in Cyber-Physical Systems (CPS) and guides readers through modeling, design, simulation, and final deployment of swarm systems. The book provides a one-stop-shop covering all relevant aspects for engineering swarm systems. Following a concise introduction part on swarm intelligence and the potential of swarm systems, the book explains modeling methods for swarm systems embodied in the interplay of physical swarm agents. Examples from several domains including robotics, manufacturing, and search and rescue applications are given. In addition, swarm robotics is further covered by an analysis of available platforms, computation models and applications. It also treats design methods for cyber-physical swarm applications including swarm modeling approaches for CPSs and classical implementations of behaviors as well as approaches based on machine-learning. A chapter on simulation covers simulation requirements and addresses the dichotomy between abstract and detailed physical simulation models. A special feature of the chapters is the hands-on character by providing programming examples with the different engineering aspects whenever possible, thus allowing for fast translation of concepts to actual implementation. Overall, the book is meant to give a creative researcher or engineer the inspiration, theoretical background, and practical knowledge to build swarm systems of CPSs. It also serves as a text for students in science and engineering. Read the full article at: www.routledge.com
sco.lt
cxdig.bsky.social
CfP Special collection: The Evolving Landscape of Complex Systems
CfP Special collection: The Evolving Landscape of Complex Systems
The Evolving Landscape of Complex Systems is a curated special collection in npj Complexity inspired by themes explored at the Conference on Complex Systems 2025 (CCS25). This collection consolidates emerging advances in theory, methodologies, and applications across the multifaceted area of complexity science. It seeks contributions that span the full spectrum - from novel computational frameworks and multiscale analyses to domain-adaptive models and novel complexity science applications - reflecting the discipline’s rapid evolution. This collection invites novel research that explores: Conceptual foundations and theory: advancements in network science, emergent dynamics, agent-based modelling, nonlinear systems, and adaptive behaviours, providing refined lenses for interpreting complex phenomena. Cross-scale integration and robustness: studies elucidating how micro-level interactions scale up to macro-level patterns, resilience, and adaptation in systems spanning biological, social, technological, and ecological networks. Computational innovation: cutting-edge analytical and computational methods - ranging from data-driven approaches and AI-augmented modelling to novel simulations and multilevel inference - that enhance the understanding and manipulation of complex systems. Interdisciplinary and application-oriented research: compelling case studies where complexity science addresses urgent global challenges - such as pandemics, misinformation, climate change, socioeconomic inequality, inclusivity and diversity, and governance - demonstrating adaptability and societal relevance. Submissions are welcomed from all researchers working in complexity science, regardless of conference participation. More at: www.nature.com
sco.lt
Reposted by Complexity Digest
css-conference.bsky.social
Thank you Prof. Han Van Der Maas (University of Amsterdam) for the inspiring talk “The Statistical Physics of Psychological Networks: Zero Matters” at CCS 2025!
Reposted by Complexity Digest
css-conference.bsky.social
Captured moments from today’s Lightning Talks! Thank you to all speakers!
Reposted by Complexity Digest
css-conference.bsky.social
Thank you Prof. Bela Bollobas (University of Cambridge) for the inspiring talk “From Ulam - von Neumann Cellular Automata and Bootstrap Percolation to U-Percolation” at CCS 2025!