Time Series Classification
Time series classification focuses on automatically assigning labels to sequential data, aiming to improve accuracy and efficiency across diverse applications. Current research emphasizes developing robust and efficient models, including those based on random forests, convolutional neural networks (CNNs), transformers, and state-space models, often incorporating techniques like transfer learning, multi-objective optimization, and self-supervised learning to address challenges such as limited data, high dimensionality, and noise. These advancements are significant for various fields, enabling improved accuracy in applications ranging from healthcare diagnostics and financial forecasting to environmental monitoring and industrial process control.
Papers
TimeDRL: Disentangled Representation Learning for Multivariate Time-Series
Ching Chang, Chiao-Tung Chan, Wei-Yao Wang, Wen-Chih Peng, Tien-Fu Chen
Series2Vec: Similarity-based Self-supervised Representation Learning for Time Series Classification
Navid Mohammadi Foumani, Chang Wei Tan, Geoffrey I. Webb, Hamid Rezatofighi, Mahsa Salehi
XAI for time-series classification leveraging image highlight methods
Georgios Makridis, Georgios Fatouros, Vasileios Koukos, Dimitrios Kotios, Dimosthenis Kyriazis, Ioannis Soldatos
Deep Learning for Time Series Classification of Parkinson's Disease Eye Tracking Data
Gonzalo Uribarri, Simon Ekman von Huth, Josefine Waldthaler, Per Svenningsson, Erik Fransén