Time Series Prediction
Time series prediction aims to forecast future values based on historical data, a crucial task across diverse fields from finance and healthcare to environmental monitoring. Current research emphasizes developing sophisticated models, including transformers, recurrent neural networks (RNNs), and novel hybrid architectures that combine deep learning with traditional statistical methods like ARIMA or wavelet decomposition, to improve accuracy and efficiency, particularly for multivariate and high-dimensional data. These advancements are driving improvements in forecasting accuracy and interpretability, leading to better decision-making in various applications and a deeper understanding of complex temporal dynamics. Furthermore, research is actively exploring methods to enhance uncertainty quantification and communication in predictions, making forecasts more reliable and useful for practical applications.
Papers
An Evaluation of Deep Learning Models for Stock Market Trend Prediction
Gonzalo Lopez Gil, Paul Duhamel-Sebline, Andrew McCarren
Enhancing Uncertainty Communication in Time Series Predictions: Insights and Recommendations
Apoorva Karagappa, Pawandeep Kaur Betz, Jonas Gilg, Moritz Zeumer, Andreas Gerndt, Bernhard Preim
A Combination Model Based on Sequential General Variational Mode Decomposition Method for Time Series Prediction
Wei Chen, Yuanyuan Yang, Jianyu Liu
A Combination Model for Time Series Prediction using LSTM via Extracting Dynamic Features Based on Spatial Smoothing and Sequential General Variational Mode Decomposition
Jianyu Liu, Wei Chen, Yong Zhang, Zhenfeng Chen, Bin Wan, Jinwei Hu
Oscillations enhance time-series prediction in reservoir computing with feedback
Yuji Kawai, Takashi Morita, Jihoon Park, Minoru Asada