Deep Learning for Time Series Forecasting: Advances and Open Problems

被引:49
作者
Casolaro, Angelo [1 ]
Capone, Vincenzo [1 ]
Iannuzzo, Gennaro [1 ]
Camastra, Francesco [1 ]
机构
[1] Parthenope Univ Naples, Dept Sci & Technol, Ctr Direzionale Isola C4, I-80143 Naples, Italy
基金
英国科研创新办公室;
关键词
short-term forecasting; long-term forecasting; recurrent neural networks; temporal convolutional neural networks; graph neural networks; deep gaussian processes; transformers; time series benchmarking; generative adversarial networks; diffusion models; ECHO STATE NETWORK; NEURAL-NETWORK; HYBRID MODEL; MULTIVARIATE; PREDICTION; LSTM; TEMPERATURE; FRAMEWORK; ALGORITHM; UPDATE;
D O I
10.3390/info14110598
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
A time series is a sequence of time-ordered data, and it is generally used to describe how a phenomenon evolves over time. Time series forecasting, estimating future values of time series, allows the implementation of decision-making strategies. Deep learning, the currently leading field of machine learning, applied to time series forecasting can cope with complex and high-dimensional time series that cannot be usually handled by other machine learning techniques. The aim of the work is to provide a review of state-of-the-art deep learning architectures for time series forecasting, underline recent advances and open problems, and also pay attention to benchmark data sets. Moreover, the work presents a clear distinction between deep learning architectures that are suitable for short-term and long-term forecasting. With respect to existing literature, the major advantage of the work consists in describing the most recent architectures for time series forecasting, such as Graph Neural Networks, Deep Gaussian Processes, Generative Adversarial Networks, Diffusion Models, and Transformers.
引用
收藏
页数:35
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