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人工智能中世界模型的起源与研究路径OA

Origin and Research Pathways of World Models in Artificial Intelligence

中文摘要英文摘要

近年来,随着人工智能技术的快速演进,世界模型逐渐成为连接感知、理解与预测的重要技术框架,其研究正从语言空间、视觉空间延伸至更具整体性的时空建模范式.文章聚焦人工智能中世界模型的起源与研究路径,梳理其从表征学习、动态建模到具身交互的技术演化逻辑,系统总结当前主流方法在理解环境结构、模拟未来状态与支持决策推理方面的核心机制.在此基础上,引入地理学的空间视角,指出世界模型所关注的"主体-空间-世界"关系,与地理学长期研究的空间组织、行为与环境互动具有内在一致性.随着视频生成、大规模多模态学习和具身智能的发展,人工智能正从对世界的符号化描述迈向可计算的空间认知过程,其本质体现为一种面向空间的智能能力.世界模型的发展,既为人工智能理解现实世界的结构与过程提供新思路,也为地理学探索时空过程建模、空间认知机制与虚实融合环境构建提供重要契机.文章旨在为人工智能与地理空间学科的交叉研究奠定系统化框架,并为未来的空间智能与通用人工智能研究提供参考.

In recent years,advances in pre-training techniques and improvements in computing hardware have led to substantial breakthroughs in Artificial Intelligence(AI).Large-scale models,such as ChatGPT and DeepSeek,have demonstrated unprecedented capabilities in natural language processing and generation,accelerating the deployment of intelligent technologies across diverse domains.Nevertheless,current large models still face notable challenges in terms of physical common-sense understanding,causal reasoning,and the modeling of dynamic environments.In response to these deficiencies,the concept of"World Models"has recently emerged,with the goal of constructing cognitive engines that internally model,simulate,and predict physical environments.In this review article we describe the origins and research pathways of World Models,tracing their technical evolution from representation learning and dynamic modeling to embodied interaction.We summarize the core approaches to understanding environmental structure,simulating future states,and supporting decision-making and reasoning.From a geographical perspective,the generative,multimodal,and interactive capabilities emphasized by World Models are regarded as key requirements for characterizing complex spatial structures and dynamic processes.These capabilities are conceptually aligned with key research topics in geography:spatial organization,behavioral processes,and interactions with the environment.With the development of video generation,large-scale multimodal learning,and embodied intelligence,the field of AI is increasingly shifting from symbolic descriptions of the world to computable forms of spatial cognition,reflecting an intelligence paradigm fundamentally oriented toward space.The advancement of World Models not only provides new ways in which AI can understand the structure and processes of the real world,but also offers important opportunities for geography to explore spatiotemporal process modeling,mechanisms of spatial cognition,and the construction of integrated virtual-physical environments.With this overview we seek to establish a systematic framework for interdisciplinary research at the intersection of AI and geographical science and to provide references for future studies on spatial intelligence and AI.

钱振兴;甘振良

复旦大学 计算与智能创新学院,上海 200433复旦大学 计算与智能创新学院,上海 200433

信息技术与安全科学

人工智能世界模型地理智能

Artificial Intelligenceworld modelsspatial intelligence

《热带地理》 2026 (1)

67-82,16

国家自然科学基金项目(62572125)上海市自然科学基金项目(25ZR1401019)

10.13284/j.cnki.rddl.20251506

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