Temporal Pattern
Temporal pattern analysis focuses on identifying and understanding recurring structures and trends within time-ordered data, aiming to improve prediction, classification, and anomaly detection across diverse fields. Current research emphasizes the development of sophisticated models, including transformers, recurrent neural networks, and generative adversarial networks, often incorporating techniques like attention mechanisms and multi-scale decompositions to capture complex temporal dynamics. These advancements are significantly impacting various domains, from healthcare (predicting disease progression) and finance (forecasting market trends) to smart mobility (identifying maneuvering states) and industrial applications (accelerating functional coverage closure). The ability to effectively model temporal patterns is crucial for extracting meaningful insights from increasingly complex and high-dimensional time series data.
Papers
SpikeReveal: Unlocking Temporal Sequences from Real Blurry Inputs with Spike Streams
Kang Chen, Shiyan Chen, Jiyuan Zhang, Baoyue Zhang, Yajing Zheng, Tiejun Huang, Zhaofei Yu
Spatial-temporal Memories Enhanced Graph Autoencoder for Anomaly Detection in Dynamic Graphs
Jie Liu, Xuequn Shang, Xiaolin Han, Wentao Zhang, Hongzhi Yin