Curious Causality-Seeking Agents Learn Meta Causal World
Curious Causality-Seeking Agents Learn Meta Causal World
When building a world model, a common assumption is that the environment has a single, unchanging underlying causal rule, like applying Newton's laws to every situation. In reality, what appears as a drifting causal mechanism is often the manifestation of a fixed underlying mechanism seen through a narrow observational window. This brings about a problem that, when building a world model, even subtle shifts in policy or environment states can alter the very observed causal mechanisms. In this work, we introduce the \textbf{Meta-Causal Graph} as world models, a minimal unified representation that efficiently encodes the transformation rules governing how causal structures shift across different latent world states. A single Meta-Causal Graph is composed of multiple causal subgraphs, each triggered by meta state, which is in the latent state space. Building on this representation, we introduce a \textbf{Causality-Seeking Agent} whose objectives are to (1) identify the meta states that trigger each subgraph, (2) discover the corresponding causal relationships by agent curiosity-driven intervention policy, and (3) iteratively refine the Meta-Causal Graph through ongoing curiosity-driven exploration and agent experiences. Experiments on both synthetic tasks and a challenging robot arm manipulation task demonstrate that our method robustly captures shifts in causal dynamics and generalizes effectively to previously unseen contexts.
Zhiyu Zhao、Haoxuan Li、Haifeng Zhang、Jun Wang、Francesco Faccio、Jürgen Schmidhuber、Mengyue Yang
自然科学研究方法系统科学、系统技术控制理论、控制技术
Zhiyu Zhao,Haoxuan Li,Haifeng Zhang,Jun Wang,Francesco Faccio,Jürgen Schmidhuber,Mengyue Yang.Curious Causality-Seeking Agents Learn Meta Causal World[EB/OL].(2025-06-29)[2025-07-19].https://arxiv.org/abs/2506.23068.点此复制
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