Self-attention-based time-variant neural networks for multi-step time series forecasting

被引:0
|
作者
Changxia Gao
Ning Zhang
Youru Li
Feng Bian
Huaiyu Wan
机构
[1] Beijing Jiaotong University,School of Computer and Information Technology
[2] China Engineering Research Center of Network Management Technology for High Speed Railway of MOE,College of Information Science and Technology
[3] Beijing Normal University,undefined
[4] Beijing Key Laboratory of Traffic Data Analysis and Mining,undefined
[5] Beijing Key Laboratory of Advanced Information Science and Network Technology,undefined
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关键词
Multi-step time series forecasting; Self-attention; Time variant; Recent changes in data; Different scales changes in data;
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学科分类号
摘要
Time series forecasting is ubiquitous in various scientific and industrial domains. Powered by recurrent and convolutional and self-attention mechanism, deep learning exhibits high efficacy in time series forecasting. However, the existing forecasting methods are suffering some limitations. For example, recurrent neural networks are limited by the gradient vanishing problem, convolutional neural networks cost more parameters, and self-attention has a defect in capturing local dependencies. What’s more, they all rely on time invariant or stationary since they leverage parameter sharing by repeating a set of fixed architectures with fixed parameters over time or space. To address the above issues, in this paper we propose a novel time-variant framework named Self-Attention-based Time-Variant Neural Networks (SATVNN), generally capable of capturing dynamic changes of time series on different scales more accurately with its time-variant structure and consisting of self-attention blocks that seek to better capture the dynamic changes of recent data, with the help of Gaussian distribution, Laplace distribution and a novel Cauchy distribution, respectively. SATVNN obviously outperforms the classical time series prediction methods and the state-of-the-art deep learning models on lots of widely used real-world datasets.
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页码:8737 / 8754
页数:17
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