Temporal Convolutional Network
Temporal Convolutional Networks (TCNs) are a class of deep learning models designed for processing sequential data, particularly time series, by leveraging the power of convolutional operations across time. Current research focuses on enhancing TCNs through integration with other architectures like Transformers and attention mechanisms to improve performance in various applications, including time series forecasting, action recognition, and anomaly detection. This work is significant because TCNs offer a powerful and efficient approach to analyzing temporal data, leading to advancements in diverse fields ranging from environmental monitoring (e.g., wind speed forecasting) to healthcare (e.g., emotion recognition from physiological signals).
Papers
Social Force Embedded Mixed Graph Convolutional Network for Multi-class Trajectory Prediction
Quancheng Du, Xiao Wang, Shouguo Yin, Lingxi Li, Huansheng Ning
Comparative Analysis on Snowmelt-Driven Streamflow Forecasting Using Machine Learning Techniques
Ukesh Thapa, Bipun Man Pati, Samit Thapa, Dhiraj Pyakurel, Anup Shrestha