Time Series
Time series analysis focuses on understanding and modeling data points collected over time, aiming to extract patterns, make predictions, and gain insights from sequential information. Current research emphasizes developing advanced model architectures, such as transformers and recurrent neural networks (RNNs/LSTMs), to handle increasingly complex, high-dimensional, and non-stationary time series data, often incorporating techniques like attention mechanisms and mixture-of-experts models for improved efficiency and accuracy. This field is crucial for numerous applications across diverse domains, including finance, healthcare, and environmental monitoring, enabling better forecasting, anomaly detection, and decision-making based on temporal data.
Papers
Deciphering Air Travel Disruptions: A Machine Learning Approach
Aravinda Jatavallabha, Jacob Gerlach, Aadithya Naresh
A Classifier-Based Approach to Multi-Class Anomaly Detection Applied to Astronomical Time-Series
Rithwik Gupta, Daniel Muthukrishna, Michelle Lochner
Tree species classification at the pixel-level using deep learning and multispectral time series in an imbalanced context
Florian Mouret, David Morin, Milena Planells, Cécile Vincent-Barbaroux
A Culturally-Aware Tool for Crowdworkers: Leveraging Chronemics to Support Diverse Work Styles
Carlos Toxtli, Christopher Curtis, Saiph Savage
Fi$^2$VTS: Time Series Forecasting Via Capturing Intra- and Inter-Variable Variations in the Frequency Domain
Rujia Shen, Yang Yang, Yaoxion Lin, Liangliang Liu, Boran Wang, Yi Guan, Jingchi Jiang
Forecasting Automotive Supply Chain Shortfalls with Heterogeneous Time Series
Bach Viet Do, Xingyu Li, Chaoye Pan, Oleg Gusikhin
HAPFI: History-Aware Planning based on Fused Information
Sujin Jeon, Suyeon Shin, Byoung-Tak Zhang
Bayesian Autoregressive Online Change-Point Detection with Time-Varying Parameters
Ioanna-Yvonni Tsaknaki, Fabrizio Lillo, Piero Mazzarisi