Real World Time Series
Real-world time series analysis focuses on developing robust methods to model and analyze complex, often noisy and incomplete, temporal data from diverse domains. Current research emphasizes creating general-purpose models, such as diffusion transformers and those leveraging frequency domain representations, that can handle various challenges like missing values, irregular sampling, and multi-modality (combining numerical and textual data). These advancements are crucial for improving forecasting accuracy, anomaly detection, and imputation across numerous applications, ranging from finance and healthcare to environmental monitoring and industrial process control.
Papers
LeMoLE: LLM-Enhanced Mixture of Linear Experts for Time Series Forecasting
Lingzheng Zhang, Lifeng Shen, Yimin Zheng, Shiyuan Piao, Ziyue Li, Fugee Tsung
Beyond Data Scarcity: A Frequency-Driven Framework for Zero-Shot Forecasting
Liran Nochumsohn, Michal Moshkovitz, Orly Avner, Dotan Di Castro, Omri Azencot