Iacopo Iacopini

129 Followers
84 Following
17 Posts

#ComplexNetworks · #ComplexSystems · #Cities

Assistant Professor @ Network Science Institute, Northeastern University London.

Websitehttps://iacopini.it
Testing LLMs in Game Theory experiments reveals their moral biases as social agents -- useful to inform alignment. Llama2 playing Prisoner's Dilemma is more forgiving and non-retaliatory than humans, but only when the opponent defects rarely. New preprint: http://arxiv.org/abs/2406.13605 @nerdsitu
Nicer Than Humans: How do Large Language Models Behave in the Prisoner's Dilemma?

The behavior of Large Language Models (LLMs) as artificial social agents is largely unexplored, and we still lack extensive evidence of how these agents react to simple social stimuli. Testing the behavior of AI agents in classic Game Theory experiments provides a promising theoretical framework for evaluating the norms and values of these agents in archetypal social situations. In this work, we investigate the cooperative behavior of Llama2 when playing the Iterated Prisoner's Dilemma against random adversaries displaying various levels of hostility. We introduce a systematic methodology to evaluate an LLM's comprehension of the game's rules and its capability to parse historical gameplay logs for decision-making. We conducted simulations of games lasting for 100 rounds, and analyzed the LLM's decisions in terms of dimensions defined in behavioral economics literature. We find that Llama2 tends not to initiate defection but it adopts a cautious approach towards cooperation, sharply shifting towards a behavior that is both forgiving and non-retaliatory only when the opponent reduces its rate of defection below 30%. In comparison to prior research on human participants, Llama2 exhibits a greater inclination towards cooperative behavior. Our systematic approach to the study of LLMs in game theoretical scenarios is a step towards using these simulations to inform practices of LLM auditing and alignment.

arXiv.org

Do you work at the intersection of complexity science and animal behaviour? 🐦🐒🐭🐝🐜🐙🦋

Don't miss your chance to present your interdisciplinary research at CRAB🦀! There are still 10d left to submit an abstract and join us in Exeter at CCS2024.

https://sites.google.com/view/crab2024/home

CRAB2024

Complexity Research in Animal Behaviour Satellite @ CCS 2024 - Exeter, September 2024 Animal groups can be considered as complex systems of interacting entities (the individuals). The collective behaviour of animal groups is an emergent outcome of the traits of individuals within the group and

Excited to announce our next NetSI public lecture at NU London! Join us on June 11th at 5pm UK, at our London campus (Devon House), for a talk by Márton Karsai (CEU, Vienna) on socioeconomic networks and segregation.

Open to all! Register and secure your spot: https://www.eventbrite.co.uk/e/socioeconomic-networks-segregation-patterns-and-their-dynamics-tickets-896320648187

Socioeconomic networks, segregation patterns and their dynamics

with guest speaker Dr Márton Karsai

Eventbrite

Funded PhD alert! 🚨

Interested in joining me at the Network Science Institute - London campus @Northeastern University London with a fully funded PhD Scholarship in Network Science?

Call: tinyurl.com/3fxe9j4f
Deadline: 1 April 2024
Start date: 1 October 2024

Just get in touch | Pls help spread the word 🕸️🕸️

Funded PhD alert! 🚨

Interested in joining me at the Network Science Institute - London campus @Northeastern University London with a fully funded PhD Scholarship in Network Science?

Call: tinyurl.com/3fxe9j4f
Deadline: 1 April 2024
Start date: 1 October 2024

Just get in touch | Pls help spread the word 🕸️🕸️

📣 Job alert - There's a fully funded PhD Scholarship in Network Science to work with me at the Network Science Institute @ Northeastern University London. Great opportunity to join the new NetSI London hub!

Application deadline: 31st Oct 2023
Feel free to reach out for more info/details etc.

https://www.jobs.ac.uk/job/DDF321/phd-scholarship-fully-funded-group-dynamics-coordination-and-performance-in-human-and-non-human-social-animals

PhD Scholarship (Fully Funded) - Group Dynamics, Coordination, and Performance in Human and Non-Human Social Animals at Northeastern University London

Start your UK & international job search for academic jobs, research jobs, science jobs and managerial jobs in leading universities and top...

Jobs.ac.uk

📣 Job alert - There's a fully funded PhD Scholarship in Network Science to work with me at the Network Science Institute @ Northeastern University London. Great opportunity to join the new NetSI London hub!

Application deadline: 31st Oct 2023
Feel free to reach out for more info/details etc.

https://www.jobs.ac.uk/job/DDF321/phd-scholarship-fully-funded-group-dynamics-coordination-and-performance-in-human-and-non-human-social-animals

PhD Scholarship (Fully Funded) - Group Dynamics, Coordination, and Performance in Human and Non-Human Social Animals at Northeastern University London

Start your UK & international job search for academic jobs, research jobs, science jobs and managerial jobs in leading universities and top...

Jobs.ac.uk

Just published: Hyper-core decomposition to investigate the interplay of node membership and group size in hypergraphs & hypercoreness centrality to understand and seed higher-order processes.
👇 Check it out!

With Marco Mancastroppa, @lordgrilo & @alainbarrat

https://www.nature.com/articles/s41467-023-41887-2

Hyper-cores promote localization and efficient seeding in higher-order processes - Nature Communications

Networks with higher-order interactions provide better description of social and biological systems, however tools to analyze their function still need to be developed. The authors introduce here a decomposition of network in hyper-cores, that gives better understanding of spreading processes and can be applied to fingerprint real-world datasets.

Nature

Waiting for the next #ComplexityThoughts?

In the issue #15 amazing new papers, from #ComplexSystems foundations to #OriginOfLife #SyntheticBiology and #ArtificialIntelligence

Unraveling complexity: building knowledge, one paper at a time!
Not yet subscribed? It's never too late, and it's 100% free.

https://manlius.substack.com/p/complexity-thoughts-issue-15

Complexity Thoughts: Issue #15

Unraveling complexity: building knowledge, one paper at a time

Complexity Thoughts

🐦 New preprint on higher-order network approaches to study animal (vocal) communication 🐦 : http://arxiv.org/abs/2309.03783

Great teamwork led by Matthew Silk w/ Jennifer Foote, Nina Fefferman & Elizabeth Derryberry

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

Animal communication is frequently studied with conventional network representations that link pairs of individuals who interact, for example, through vocalisation. 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: a) alter predictions made about the outcome of vocally-coordinated group departures; b) generate different patterns of song synchronisation than models that only include dyadic interactions; and c) 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 these techniques could help answer.

arXiv.org