Computer Science ›› 2026, Vol. 53 ›› Issue (2): 180-186.doi: 10.11896/jsjkx.250100113
• Database & Big Data & Data Science • Previous Articles Next Articles
PAN Jian1,2, WANG Xuhao2
CLC Number:
| [1]MAO Y H,SUN C C,XU L Y,et al.A Review of Time Series Forecasting Methods Based on Deep Learning[J].Microelectronics & Computer,2023,40(4):8-17. [2]CHENG W H,CHE W G.Research on Financial Time SeriesForecasting Algorithm Based on Secondary Decomposition and LSTM[J].Journal of Chongqing University of Posts and Telecommunications(Natural Science Edition),2022,34(4):638-645. [3]KAN G Y,YANG J.Research on Meteorological Time Series Forecasting Based on Wavelet Transform and LSTM Hybrid Model[J].Computer Science and Application,2022,12(3):682-689. [4]XU S,LIU D D.Power Load Forecasting Based on Time Series Combination Model[J].Electronic Design Engineering,2023,31(23):1-6. [5]VASWANI A,SHAZEER N,PARMAR N,et al.Attention isall you need[C]//Proceedings of the 31st InternationalConfe-rence on Neural Information Processing Systems.2017:6000-6010. [6]ZAREMBA W,ILYA S,ORIOL V.Recurrent neural network regularization[J].arXiv:1409.2329,2014. [7]CHUNG J,GULCEHRE C,CHO K H,et al.Empirical evalu-ation of gated recurrent neural networks on sequence modeling[J].arXiv:1412.3555,2014. [8]HOCHREITER S,SCHMIDHUBER J.Long short-termmemory[J].Neural Computation,1997,9(8):1735-1780. [9]LEA C,FLYNN M D,VIDAL R,et al.Temporal convolutional networks for action segmentation and detection[C]//Procee-dings of the IEEE Conference on Computer Vision and Pattern Recognition.2017:156-165. [10]WU H,HU T,LIU Y,et al.Timesnet:Temporal 2d-variation modeling for general time series analysis[C]//The Eleventh International Conference on Learning Representations.2022. [11]ZHOU H,ZHANG S,PENG J,et al.Informer:Beyond efficient transformer for long sequence time-series forecasting[C]//Proceedings of the AAAI Conference on Artificial Intelligence.2021:11106-11115. [12]WU H,XU J,WANG J,et al.Autoformer:Decomposition transformers with auto-correlation for long-term series forecasting[J].Advances in Neural Information Processing Systems,2021,34:22419-22430. [13]KITAEV N,KAISER Ł,LEVSKAYA A.Reformer:The efficient transformer[J].arXiv:2001.04451,2020. [14]ZHOU T,MA Z,WEN Q,et al.Fedformer:Frequency enhanced decomposed transformer for long-term series forecasting[C]//International Conference on Machine Learning.PMLR,2022:27268-27286. [15]NIE Y,NGUYEN N H,SINTHONG P,et al.A time series is worth 64 words:Long-term forecasting with transformers[J].arXiv:2211.14730,2022. [16]CHEN P,ZHANG Y,CHENG Y,et al.Pathformer:Multi-scale transformers with adaptive pathways for time series forecasting[J].arXiv:2402.05956,2024. [17]ZENG A L,CHEN M X,ZHANG L,et al.Are transformers effective for time series forecasting?[C]//Proceedings of the AAAI Conference on Artificial Intelligence.2023. [18]ASUNCION A,NEWMAN D.UCI machine learning repository[EB/OL].https://github.com/uci-ml-repo. [19]CHOLLET F.Deep learning with Python[M]//Manning Publications.2021:45-52. [20]ZHAO L,GKOUNTOUNA O,PFOSER D.Spatial auto-regressive dependency interpretable learning based on spatial topological constraints[J].ACM Transactions on Spatial Algorithms and Systems,2019,5(3):1-28. |
| [1] | LI Jiahao, JING Junchang, XU Qian, LIU Dong. GTKT:Knowledge Tracing Model Integrating Connectivism Learning and Multi-layer TemporalGraph Transformer [J]. Computer Science, 2026, 53(2): 78-88. |
| [2] | GENG Haijun, LI Dongxin. D-LINet:Time Series Forecasting Framework Integrating Dual-linear Layersand Dual Normalization [J]. Computer Science, 2026, 53(2): 170-179. |
| [3] | LIU Chenhong, LI Fenglian, YANG Jia, WANG Suzhe, CHEN Guijun. Boundary-focused Multi-scale Feature Fusion Network for Stroke Lesion Segmentation [J]. Computer Science, 2026, 53(2): 264-272. |
| [4] | WANG Cheng, JIN Cheng. KAN-based Unsupervised Multivariate Time Series Anomaly Detection Network [J]. Computer Science, 2026, 53(1): 89-96. |
| [5] | DENG Jiayan, TIAN Shirui, LIU Xiangli, OUYANG Hongwei, JIAO Yunjia, DUAN Mingxing. Trajectory Prediction Method Based on Multi-stage Pedestrian Feature Mining [J]. Computer Science, 2025, 52(9): 241-248. |
| [6] | HU Hailong, XU Xiangwei, LI Yaqian. Drug Combination Recommendation Model Based on Dynamic Disease Modeling [J]. Computer Science, 2025, 52(9): 96-105. |
| [7] | DING Zhengze, NIE Rencan, LI Jintao, SU Huaping, XU Hang. MTFuse:An Infrared and Visible Image Fusion Network Based on Mamba and Transformer [J]. Computer Science, 2025, 52(8): 188-194. |
| [8] | LIU Huayong, XU Minghui. Hash Image Retrieval Based on Mixed Attention and Polarization Asymmetric Loss [J]. Computer Science, 2025, 52(8): 204-213. |
| [9] | SHEN Tao, ZHANG Xiuzai, XU Dai. Improved RT-DETR Algorithm for Small Object Detection in Remote Sensing Images [J]. Computer Science, 2025, 52(8): 214-221. |
| [10] | LIU Yajun, JI Qingge. Pedestrian Trajectory Prediction Based on Motion Patterns and Time-Frequency Domain Fusion [J]. Computer Science, 2025, 52(7): 92-102. |
| [11] | HUANG Xingyu, WANG Lihui, TANG Kun, CHENG Xinyu, ZHANG Jian, YE Chen. EFormer:Efficient Transformer for Medical Image Registration Based on Frequency Division and Board Attention [J]. Computer Science, 2025, 52(7): 151-160. |
| [12] | WANG Youkang, CHENG Chunling. Multimodal Sentiment Analysis Model Based on Cross-modal Unidirectional Weighting [J]. Computer Science, 2025, 52(7): 226-232. |
| [13] | LI Yang, LIU Yi, LI Hao, ZHANG Gang, XU Mingfeng, HAO Chongqing. Human Pose Estimation Using Millimeter Wave Radar Based on Transformer and PointNet++ [J]. Computer Science, 2025, 52(6A): 240400169-9. |
| [14] | WANG Xuejian, WANG Yiheng, SUN Xinpo, LIU Chuan, JIA Ming, ZHAO Chao, YANG Chao. Extraction of Crustal Deformation Anomalies Based on Transformer-Isolation Forest [J]. Computer Science, 2025, 52(6A): 240600155-6. |
| [15] | PIAO Mingjie, ZHANG Dongdong, LU Hu, LI Rupeng, GE Xiaoli. Study on Multi-agent Supply Chain Inventory Management Method Based on Improved Transformer [J]. Computer Science, 2025, 52(6A): 240500054-10. |
|
||