Temporal Data
Temporal data analysis focuses on understanding and modeling data that changes over time, aiming to extract patterns, make predictions, and gain insights from dynamic systems. Current research emphasizes the development and application of advanced machine learning models, including graph neural networks, transformers, and diffusion models, often incorporating physical constraints or leveraging pre-trained language models for improved accuracy and efficiency in tasks like forecasting and anomaly detection. This field is crucial for diverse applications, from predicting traffic flow and disease outbreaks to analyzing financial markets and understanding climate change, driving advancements in various scientific disciplines and practical domains.
Papers
Reuse out-of-year data to enhance land cover mapping via feature disentanglement and contrastive learning
Cassio F. Dantas, Raffaele Gaetano, Claudia Paris, Dino Ienco
ScaleFold: Reducing AlphaFold Initial Training Time to 10 Hours
Feiwen Zhu, Arkadiusz Nowaczynski, Rundong Li, Jie Xin, Yifei Song, Michal Marcinkiewicz, Sukru Burc Eryilmaz, Jun Yang, Michael Andersch
Portraying the Need for Temporal Data in Flood Detection via Sentinel-1
Xavier Bou, Thibaud Ehret, Rafael Grompone von Gioi, Jeremy Anger
SalienTime: User-driven Selection of Salient Time Steps for Large-Scale Geospatial Data Visualization
Juntong Chen, Haiwen Huang, Huayuan Ye, Zhong Peng, Chenhui Li, Changbo Wang
Online Student-$t$ Processes with an Overall-local Scale Structure for Modelling Non-stationary Data
Taole Sha, Michael Minyi Zhang
DistDNAS: Search Efficient Feature Interactions within 2 Hours
Tunhou Zhang, Wei Wen, Igor Fedorov, Xi Liu, Buyun Zhang, Fangqiu Han, Wen-Yen Chen, Yiping Han, Feng Yan, Hai Li, Yiran Chen