ICLR 2026将在2025年4月24日到28日于巴西里约热内卢(Rio de Janeiro, Brazil)举行。ICLR 2025共有19,000多篇投稿,录用5,359篇,录取率28.18%。
本文总结了ICLR 2026时空数据(Spatial-Temporal)的论文,总计36篇,本文涉及23篇,如有疏漏,欢迎补充。
注:由于论文数目较多,分为上下篇,基于数据生成机制与应用场景的本质差异对论文进行分类:
观察:上篇的所有文章统计值
最大均分 | 均值 | 最小均分 |
|---|---|---|
6.5 | 5.28 | 4 |
其中 均分≥6的有6篇
1. Micro-Macro Coupled Koopman Modeling on Graph for Traffic Flow Prediction2. MoRA: Mobility as the Backbone for Geospatial Representation Learning at Scale3. ELLMob: Event-Driven Human Mobility Generation with Self-Aligned LLM Framework4. Lightweight Spatio-Temporal Modeling via Temporally Shifted Distillation for Real-Time Accident Anticipation5. ST-HHOL: Spatio-Temporal Hierarchical Hypergraph Online Learning for Crime Prediction6. A General Spatio-Temporal Backbone with Scalable Contextual Pattern Bank for Urban Continual Forecasting7. USTBench: Benchmarking and Dissecting Spatiotemporal Reasoning Capabilities of LLMs as Urban Agents8. UrbanGraph: Physics-Informed Spatio-Temporal Dynamic Heterogeneous Graphs for Urban Microclimate Prediction9. TrajFlow: Nation-wide Pseudo GPS Trajectory Generation with Flow Matching Models10. A Unified Federated Framework for Trajectory Data Preparation via LLMs11. TRIDENT: Cross-Domain Trajectory Spatio-Temporal Representation via Distance-Preserving Triplet Learning12. CoLLMLight: Cooperative Large Language Model Agents for Network-Wide Traffic Signal Control13. DecompGAIL: Learning Realistic Traffic Behaviors with Decomposed Multi-Agent Generative Adversarial Imitation Learning14. Advancing Multi-agent Traffic Simulation via R1-Style Reinforcement Fine-Tuning15. Plan-R1: Safe and Feasible Trajectory Planning as Language Modeling16. BridgeDrive: Diffusion Bridge Policy for Closed-Loop Trajectory Planning in Autonomous Driving17. OccDriver: Future Occupancy Guided Dual-branch Trajectory Planner in Autonomous Driving18. Learning Dynamics Feature Representation via Policy Attention for Dynamic Path Planning in Urban Road Networks19. UrbanVerse: Scaling Urban Simulation by Watching City-Tour Videos20. UrbanFeel:A Comprehensive Benchmark for Temporal and Perceptual Understanding of City Scenes through Human Perspective21. CityLens: Evaluating Large Vision-Language Models for Urban Socioeconomic Sensing22. Urban Socio-Semantic Segmentation with Vision-Language Reasoning23. CitySeeker: How Do VLMs Explore Embodied Urban Navigation with Implicit Human Needs? |
|---|

链接:https://openreview.net/forum?id=fhDqFk4DgI
关键词:Koopman Operator; Traffic Flow Prediction
作者:Bairan Xiang, Chenguang Zhao, Huan Yu
分数:6, 6, 6, 6
信心:2, 2, 4, 3
均分:6.0

链接:https://openreview.net/forum?id=IlBr5JJsCj
关键词:GeoAI, spatial representation learning, location embedding, multi-modal, contrastive learning
作者:Ya Wen, Jixuan Cai, Qiyao Ma, Linyan Li, Xinhuan Chen, Chris Webster, Yulun Zhou
分数:8, 6, 6, 4
信心:4, 3, 4, 5
均分:6.0
TL; DR:We present MoRA, a human-centric geospatial framework that leverages a mobility graph as its core backbone to fuse various data modalities, aiming to learn embeddings that represent the socio-economic context and functional role of a location.

链接:https://openreview.net/forum?id=MPYsaBgZIT
关键词:Human Mobility Generation, Large Language Models, Event-Driven Mobility, Urban Computing
作者:Yusong Wang, Chuang Yang, Jiawei Wang, Xiaohang Xu, Jiayi Xu, Dongyuan Li, Chuan Xiao, Renhe Jiang
分数:6, 6, 4, 4
信心:2, 4, 4, 3
均分:5.0

链接:https://openreview.net/forum?id=8zzfTSVds2
关键词:lightweight spatio-temporal modeling, model distillation, accident anticipation, edge deployment
作者:Patrik Patera, Yie-Tarng Chen, Wen-Hsien Fang
分数:6, 6, 4
信心:2, 2, 2
均分:5.333333333333333
TL; DR:A lightweight, real-time accident predictor trained via novel temporally shifted distillation, combining efficient spatial encoding and recurrent temporal modeling, running on edge devices.

链接:https://openreview.net/forum?id=Nc3dl43s5Z
关键词:Crime prediction, Spatio-temporal graph neural networks, Spatio-temporal data mining
作者:Keqing Du, Yufan Kang, Xinyu Yang, Wei Shao
分数:4, 6, 2, 8, 4
信心:3, 4, 4, 4, 4
均分:4.8
TL; DR:We propose ST-HHOL, an online spatio-temporal crime prediction framework that leverages hierarchical hypergraphs to uncover dual-specific patterns and tackle concept drift in non-stationary crime data.

链接:https://openreview.net/forum?id=LHSea6DI8U
关键词:general backbone, contextual pattern bank, continual spatio-temporal forecasting
作者:Aoyu Liu, Yaying Zhang
分数:4, 8, 6
信心:3, 5, 4
均分:6.0

链接:https://openreview.net/forum?id=ETzBStUFJy
关键词:large language model, spatiotemporal reasoning, urban science
作者:Siqi Lai, Yansong Ning, Zirui Yuan, Zhixi Chen, Hao Liu
分数:6, 6, 4, 8
信心:4, 3, 4, 4
均分:6.0
TL; DR:A benchmark for evaluating the urban spatiotemporal reasoning abilities of LLMs.

链接:https://openreview.net/forum?id=ckjNF94cIi
关键词:Spatio-Temporal Graph, Heterogeneous Graph, Dynamic Graph, Physics-Informed ML, Urban Microclimate
作者:Weilin Xin, Chenyu Huang, Peilin Li, Jing Zhong, Jiawei Yao
分数:4, 6, 6, 6
信心:4, 3, 3, 4
均分:5.5

链接:https://openreview.net/forum?id=BDOldEjwCE
关键词:Flow matching, Human Trajectory, Generative modeling, Human mobility
作者:Peiran Li, Jiawei Wang, Haoran Zhang, Xiaodan Shi, Noboru Koshizuka, Chihiro Shimizu, Renhe Jiang
分数:10, 4, 6, 6
信心:5, 3, 5, 4
均分:6.5
TL; DR:This paper proposed TrajFM, a flow-matching-based GPS trajectory generation model that overcomes scale, diversity, and efficiency limitations of diffusion approaches to enable nationwide, multi-scale, and multi-modal human mobility data generation.

链接:https://openreview.net/forum?id=MIelckWrEK
关键词:Trajectory Data Preparation, Federated Learning, Large Language Model, Trajectory Preprocessing
作者:Zhihao Zeng, Ziquan Fang, Wei Shao, Lu Chen, Yunjun Gao
分数:6, 4, 8, 4
信心:3, 3, 5, 5
均分:5.5

链接:https://openreview.net/forum?id=gOk3o4lMRD
关键词:Spatiotemporal representation learning, Trajectory analysis, Cross-domain generalization, Triplet loss, Distance metric learning, self-supervised representation learning
作者:Guan Yi Jhang, Jeng-Chung Lien, Yu Hui-Ching, Hsu-Chao Lai, Jiun-Long Huang
分数:2, 6, 4, 6
信心:4, 3, 5, 4
均分:4.5
TL; DR:We learn self-supervised trajectory embedding with local pooling by fusing spatio-temporal features, and train with distance-preserving triplet loss aligning native-space 𝑑(𝑎,𝑝) and 𝑑(𝑎,𝑛), reduce distortion and improve cross-domain retrieval.

链接:https://openreview.net/forum?id=KeJqoEVOeY
关键词:Traffic Signal Control, Large Language Model, Multi-Agent System, Intelligent Transportation
作者:Zirui Yuan, Siqi Lai, Hao Liu
分数:6, 4, 8, 4
信心:4, 4, 3, 3
均分:5.5
TL; DR:We introduce CoLLMLight, a cooperative LLM framework that achieves effective and efficient network-wide traffic signal control via spatiotemporal reasoning, asynchronous decision architecture, and cost-aware cooperation optimization.

链接:https://openreview.net/forum?id=AcDx2tUZPb
关键词:traffic simulation, multi-agent imitation learning, generative adversarial imitation learning
作者:Ke Guo, Haochen Liu, XIAOJUN WU, Chen Lv
分数:4, 4, 8
信心:4, 5, 4
均分:5.333333333333333

链接:https://openreview.net/forum?id=7BiQwV9Sic
关键词:Autonomous Driving, Reinforcement Fine-Tuning, Multi-agent Traffic Simulation
作者:Muleilan Pei, Shaoshuai Shi, Shaojie Shen
分数:8, 2, 6, 4
信心:3, 4, 4, 5
均分:5.0
TL; DR:A novel R1-style Reinforcement Fine-Tuning (RFT) paradigm for multi-agent traffic simulation in autonomous driving.

链接:https://openreview.net/forum?id=uusTA1rBhR
关键词:Trajectory Planning, Reinforcement Learning, Autonomous Driving
作者:Xiaolong Tang, Meina Kan, Shiguang Shan, Xilin Chen
分数:4, 8, 8, 6
信心:2, 4, 4, 3
均分:6.5
TL; DR:We propose Plan-R1, a two-stage framework that decouples planning principle alignment from behavior learning to overcome the limitations of expert data. With VD-GRPO to preserve safety-critical signals, Plan-R1 achieves SOTA results on nuPlan.

链接:https://openreview.net/forum?id=dJKhjK4zpp
关键词:Diffusion policy, closed-loop planning, end-to-end autonomous driving
作者:Shu Liu, Wenlin Chen, Weihao Li, Zheng Wang, Lijin Yang, Jianing Huang, YipinZhang, Zhongzhan Huang, Ze Cheng, Hao Yang
分数:6, 6, 4, 6
信心:3, 5, 4, 4
均分:5.5

链接:https://openreview.net/forum?id=abJCjkIwi5
关键词:Autonomous Driving, Trajectory Planning
作者:Zhao Huang, Bowen Zhang, Zhongzhu Li, Di Lin
分数:2, 6, 8
信心:4, 3, 5
均分:5.333333333333333

链接:https://openreview.net/forum?id=1E4Bltg6Xb
关键词:Dynamic Path Planning; Reinforcement Learning; State Representation; Dynamics Feature Representation; Policy Attention Mechanism
作者:Kai Zhang, Jingjing Gu, Qiuhong Wang
分数:2, 6, 6
信心:5, 3, 3
均分:4.666666666666667

链接:https://openreview.net/forum?id=HE6j2jtjII
关键词:Simulation, Real-to-Sim, Sim-to-Real, Digital Twin, Robot Navigation, Reinforcement Learning
作者:Mingxuan Liu, Honglin He, Elisa Ricci, Wayne Wu, Bolei Zhou
分数:6, 6, 2, 8
信心:3, 5, 5, 4
均分:5.5

链接:https://openreview.net/forum?id=OtLC2JNGZf
关键词:Benchmark, Urban Change, Urban Perception, Multimodel Large Language Models
作者:Jun He, Yi Lin, Zilong Huang, Jiacong Yin, Junyan Ye, Yuchuan Zhou, Weijia Li, Xiang Zhang
分数:6, 4, 4, 6
信心:5, 4, 4, 4
均分:5.0

链接:https://openreview.net/forum?id=kswX9NfAlo
关键词:Multi-modal Large Language Model, Socioeconomic Prediction, Urban Imagery, Urban Science, Benchmark
作者:Tianhui Liu, Hetian Pang, Xin Zhang, Tianjian Ouyang, Zhiyuan Zhang, Jie Feng, Yong Li, Pan Hui
分数:6, 6, 6, 2
信心:4, 4, 3, 4
均分:5.0
TL; DR:We propose a global scale benchmark to evaluate the performance of large language-vision models for urban imagery-based socioeconomic prediction

链接:https://openreview.net/forum?id=sVN9K0BLQj
关键词:Remote Sensing, Semantic Segmentation, Vision Language Model, Reinforcement Learning
作者:Yu Wang, Yi Wang, Rui Dai, Yujie Wang, Kaikui Liu, Xiangxiang Chu, Yansheng Li
分数:6, 2, 2, 4, 6
信心:3, 3, 4, 4, 4
均分:4.0

链接:https://openreview.net/forum?id=hzf23XSDcs
关键词:Embodied Urban Navigation, Vision-Language Models, Urban Intelligence, Spatial Cognition
作者:Siqi Wang, Chao Liang, Yunfan Gao, Erxin Yu, Sen Li, Jing Li, Haofen Wang
分数:6, 4, 2, 4
信心:5, 4, 4, 4
均分:4.0

ICLR 2026 | 时间序列(Time Series)论文总结[下]【分类,异常检测,生成,插补,LLM与基础模型】
ICLR 2026 | 时间序列(Time Series)论文总结(上)【预测,多模态,预测×LLM,基础模型】
ICLR 2026 | Rebuttal前 时间序列(Time Seires)高分论文总结
NeurIPS 2025 | 时间序列(Time Series)论文总结[上]——时间序列预测
NeurIPS 2025 | 时间序列(Time Series)论文总结[下]——基础模型, 异常检测, 分类, 生成,表示学习
ICML 2025 | 时间序列(Time Series)论文总结
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