Eleventh International Conference on Guided Self-Organization (GSO-2025)

​”Guided Self-Organization: Machine Learning in Embodied Agents”
The 11th International Conference on Guided Self-Organization takes place during 12-14 February 2025 in Tübingen, Germany. GSO-2025 is organized by The University of Tübingen, The Hamburg University of Technology, The Max Planck Institute for Intelligent Systems, and The International Association for Guided Self-Organization (TIA-GSO).
Research Aims and Topics
The goal of Guided Self-Organization (GSO) is to leverage the strengths of self-organization (simplicity, parallelization, adaptability, robustness, scalability) while still being able to direct the outcome of the self-organizing process. GSO typically has the following features: (i) an increase in organization (structure and/or functionality) over some time; (ii) the local interactions are not explicitly guided by any external agent; (iii) task-independent objectives are combined with task-dependent constraints.

GSO “aims to regulate self-organization for specific purposes, so that a dynamical system may reach specific attractors or outcomes. The regulation constrains a self-organizing process within a complex system by restricting local interactions between the system components, rather than following an explicit control mechanism or a global design blueprint.” Information theory, nonlinear dynamics and network theory are core to many of these methods, and quantifying complexity, its sources and effects is a common theme.

The GSO-2025 conference will bring together invited experts and researchers in machine learning, artificial life, self-organizing systems, and complex adaptive systems, with particular emphasis on autonomous agents, information theory, critical phenomena and emergent behaviour. Special topics of interest include: reinforcement learning, intrinsic motivations, origin of life, systems biology, physics of life, unconventional computation, swarm intelligence, measures of complexity, criticality, complex networks, information-driven self-organization (IDSO), etc.

The program includes three days, with five keynote talks, and a number of regular onsite presentations on each day. There are no registration fees for the conference.

More at: www.guided-self.org

Celebrate 20 years of the Places & Spaces: Mapping Science exhibit

Please join us to celebrate 20 years of the Places & Spaces: Mapping Science exhibit! The exhibit is curated here at CNS and has traveled the globe showcasing best examples of information visualization.

When?  June 6, 2024 from 4PM to 6PM EDT.

Where?  In person at University Collections at McCalla, 525 E 9th St., Bloomington, IN 47408 or online via Zoom webinar.

What?  Reception. Enjoy refreshments, remarks from the exhibition curators, presentations from teams whose works have been selected for inclusion in the exhibit this year, and the opportunity to try out a data visualization in VR.

Why?  To introduce the latest additions to the exhibit and celebrate the 20th anniversary of the inception of the Places & Spaces: Mapping Science exhibit, see 100 maps and 40 interactive macroscopes at scimaps.org.

More at: cns-iu.github.io

How networks shape diversity for better or worse

Andrea Musso and Dirk Helbing

Royal Society Open Science

May 2024 Volume 11Issue 5

Socio-diversity, the variety of human opinions, ideas, behaviours and styles, has profound implications for social systems. While it fuels innovation, productivity and collective intelligence, it can also complicate communication and erode trust. So what mechanisms can influence it? This paper studies how fundamental characteristics of social networks can support or hinder socio-diversity. It employs models of cultural evolution, mathematical analysis and numerical simulations. We find that pronounced inequalities in the distribution of connections obstruct socio-diversity. By contrast, the prevalence of close-knit communities, a scarcity of long-range connections, and a significant tie density tend to promote it. These results open new perspectives for understanding how to change social networks to sustain more socio-diversity and, thereby, societal innovation, collective intelligence and productivity.

Read the full article at: royalsocietypublishing.org

The diaspora model for human migration

Rafael Prieto-Curiel, Ola Ali, Elma Dervić, Fariba Karimi, Elisa Omodei, Rainer Stütz, Georg Heiler, Yurij Holovatch

PNAS Nexus, Volume 3, Issue 5, May 2024, page 178,

Migration’s impact spans various social dimensions, including demography, sustainability, politics, economy, and gender disparities. Yet, the decision-making process behind migrants choosing their destination remains elusive. Existing models primarily rely on population size and travel distance to explain the spatial patterns of migration flows, overlooking significant population heterogeneities. Paradoxically, migrants often travel long distances and to smaller destinations if their diaspora is present in those locations. To address this gap, we propose the diaspora model of migration, incorporating intensity (the number of people moving to a country), and assortativity (the destination within the country). Our model considers only the existing diaspora sizes in the destination country, influencing the probability of migrants selecting a specific residence. Despite its simplicity, our model accurately reproduces the observed stable flow and distribution of migration in Austria (postal code level) and US metropolitan areas, yielding precise estimates of migrant inflow at various geographic scales. Given the increase in international migrations, this study enlightens our understanding of migration flow heterogeneities, helping design more inclusive, integrated cities.

Read the full article at: academic.oup.com

Not your private tête-à-tête: leveraging the power of higher-order networks to study animal communication

Iacopo Iacopini, Jennifer R. Foote, Nina H. Fefferman, Elizabeth P. Derryberry and Matthew J. Silk

Phil Trans Roy Soc B

08 July 2024 Volume 379Issue 1905

Animal communication is frequently studied with conventional network representations that link pairs of individuals who interact, for example, through vocalization. However, acoustic signals often have multiple simultaneous receivers, or receivers integrate information from multiple signallers, meaning these interactions are not dyadic. Additionally, non-dyadic social structures often shape an individual’s behavioural response to vocal communication. Recently, major advances have been made in the study of these non-dyadic, higher-order networks (e.g. hypergraphs and simplicial complexes). Here, we show how these approaches can provide new insights into vocal communication through three case studies that illustrate how higher-order network models can: (i) alter predictions made about the outcome of vocally coordinated group departures; (ii) generate different patterns of song synchronization from models that only include dyadic interactions; and (iii) inform models of cultural evolution of vocal communication. Together, our examples highlight the potential power of higher-order networks to study animal vocal communication. We then build on our case studies to identify key challenges in applying higher-order network approaches in this context and outline important research questions that these techniques could help answer.

Read the full article at: royalsocietypublishing.org