Efficiency, learnability, and structure in recursive systems of communication
Licentiatavhandling, 2026
This thesis extends the study of efficient communication to compositional domains with productive morphosyntax, focusing primarily on recursive numeral systems. Across four contributions, we employ computational modeling to explore how functional and learning pressures shape structured languages. First, we show through multi-agent reinforcement learning that artificial agents optimised solely for communicative success tend to prefer more efficient recursive numeral systems. Second, we argue that previous efficiency measures cannot account for regularity and introduce a different trade-off that can separate human systems from artificial ones that were previously considered optimal but were lacking human-likeness. Third, we connect regularity to learnability, using reinforcement learning to show that human numeral systems exhibit high regularity because they are inherently easier to learn. Finally, we expand this framework to an open-ended collaborative building task, showing that agents utilising procedural abstractions develop languages that minimise similar efficiency trade-offs.
Overall, this work attempts to bridge the gap between efficient communication models and the compositional reality of language, demonstrating how structure is consistently preferred because of communicative and cognitive constraints.
Efficient communication
Reinforcement Learning
Recursive numeral systems
Learnability
Regularity
Författare
Andrea Silvi
Chalmers, Data- och informationsteknik, Data Science och AI
Learning Efficient Recursive Numeral Systems via Reinforcement Learning
Proceedings of the Annual Meeting of the Cognitive Science Society,;Vol. 47(2025)p. 4700-4707
Paper i proceeding
Recursive numeral systems are highly regular and easy to process.
Association for Computational Linguistics. European Chapter . Proceedings of the Conference.,;Vol. Volume 1: Long Papers(2026)p. 4873-4885
Paper i proceeding
Silvi, A., Prasertsom, P., Culbertson, J., Dubhashi, D., Johansson, M., Smith, K. Evaluating the relationship between regularity and learnability in recursive numeral systems using Reinforcement Learning
PACE: Procedural Abstractions for Communicating Efficiently
Proceedings of the Annual Meeting of the Cognitive Science Society,;Vol. 47(2025)
Paper i proceeding
Ämneskategorier (SSIF 2025)
Datavetenskap (datalogi)
Jämförande språkvetenskap och allmän lingvistik
Utgivare
Chalmers
Room ED, EDIT building
Opponent: Prof. Jakub Szymanik, Center for Mind/Brain Sciences and Department of Information Engineering and Computer Science, University of Trento, Italy.