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Article type: Research Article
Authors: Chen, Gongguana | Wang, Huab | Liu, Yepenga; c | Zhang, Minglid | Zhang, Fana; c; *
Affiliations: [a] Shandong Technology and Business University, Yantai, Shandong, China | [b] Ludong University, Yantai, Shandong, China | [c] Shandong Future Intelligent Financial Engineering Laboratory, Yantai, Shandong, China | [d] McGill Centre for Integrative Neuroscience, Montreal Neurological Institute, McGill University, Montreal, Canada
Correspondence: [*] Corresponding author: Fan Zhang, Shandong Technology and Business University, Shandong 264005, China. E-mail: zhangfan51@sina.com.
Abstract: With the continuous development of deep learning, long sequence time-series forecasting (LSTF) has attracted more and more attention in power consumption prediction, traffic prediction and stock prediction. In recent studies, various improved models of Transformer are favored. While these models have made breakthroughs in reducing the time and space complexity of Transformer, there are still some problems, such as the predictive power of the improved model being slightly lower than that of Transformer. And these models ignore the importance of special values in the time series. To solve these problems, we designed a more concise network named Resformer, which has four significant characteristics: (1) The fully sparse self-attention mechanism achieves Oโข(๐ฟ๐๐๐๐ฟ) time complexity. (2) The AMS module is used to process the special values of time series and has comparable performance on sequences dependency alignment. (3) Using quadratic linear transformation, a simple LT module is designed to replace the self-attention mechanism. It effectively reduces redundant information. (4) The DistPooling method based on data distribution is proposed to suppress redundant information and noise. A large number of experiments on real data sets show that the Resformer method is superior to the existing improved model and standard Transformer method.
Keywords: Sparse, self-attention, time-series forecasting, quadratic linear transformation
DOI: 10.3233/IDA-227006
Journal: Intelligent Data Analysis, vol. 27, no. 6, pp. 1557-1572, 2023
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