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Foundation World Models for Agents that Learn, Verify, and Adapt Reliably Beyond Static Environments

Onderzoeksoutput: Conference paper

Samenvatting

The next generation of autonomous agents must not only learn efficiently but also act reliably and adapt their behavior in open worlds. Standard approaches typically assume fixed tasks and environments with little or no novelty, which limits world models’ ability to support agents that must evolve their policies as conditions change. This paper outlines a vision for foundation world models: persistent, compositional representations that unify reinforcement learning, reactive/program synthesis, and abstraction mechanisms. We propose an agenda built around four components: (i) learnable reward models from specifications to support optimization with clear objectives; (ii) adaptive formal verification integrated throughout learning; (iii) online abstraction calibration to quantify the reliability of the model’s predictions; and (iv) test-time synthesis and world-model generation guided by verifiers. Together, these components enable agents to synthesize verifiable programs, derive new policies from a small number of interactions, and maintain correctness while adapting to novelty. The resulting framework positions foundation world models as a substrate for learning, reasoning, and adaptation, laying the groundwork for agents that not only act well but can explain and justify the behavior they adopt.
Originele taal-2English
TitelFoundation World Models for Agents that Learn, Verify, and Adapt Reliably Beyond Static Environments
Plaats van productiePaphos, Cyprus
UitgeverijInternational Foundation for Autonomous Agents and Multiagent Systems (IFAAMAS)
Pagina's1-7
Aantal pagina's7
VolumeProc. of the 25th International Conference on Autonomous Agents and Multiagent Systems
Uitgave25
StatusAccepted/In press - 26 mei 2026
EvenementThe 25th International Conference on Autonomous Agents
and Multiagent Systems
- Paphos, Cyprus
Duur: 25 mei 202629 mei 2026
https://cyprusconferences.org/aamas2026/

Conference

ConferenceThe 25th International Conference on Autonomous Agents
and Multiagent Systems
Verkorte titelAAMAS 2026
Land/RegioCyprus
StadPaphos
Periode25/05/2629/05/26
Internet adres

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    Onderzoeksoutput: Voordruk

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