中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Regularized Graph Structure Learning with Semantic Knowledge for Multi-variates Time-Series Forecasting

文献类型:会议论文

作者Yu HY(俞宏远); Li, Ting; Yu WC(余玮宸); Li, Jianguo; Huang Y(黄岩); Wang L(王亮); Liu, Alex
出版日期2022
会议日期2022
会议地点维也纳
英文摘要

Multivariate time-series forecasting is a critical task for many applications, and graph time-series network is widely studied due to its capability to
capture the spatial-temporal correlation simultaneously. However, most existing works focus more on learning with the explicit prior graph structure, while ignoring potential information from the implicit graph structure, yielding incomplete structure modeling. Some recent works attempts to learn the intrinsic or implicit graph structure directly, while lacking a way to combine explicit prior structure with implicit structure together. In this paper, we propose Regularized Graph Structure Learning (RGSL) model to incorporate both explicit prior structure and implicit structure together, and learn the forecasting deep networks along with the graph structure. RGSL consists of two innovative modules. First, we derive an implicit dense similarity matrix through node embedding, and learn the sparse graph structure using the Regularized Graph Generation (RGG) based on the Gumbel Softmax trick. Second, we propose a Laplacian Matrix Mixed-up Module (LM3) to fuse the explicit graph and implicit graph together. We conduct experiments on three real-word
datasets. Results show that the proposed RGSL model outperforms existing graph forecasting algorithms with a notable margin, while learning meaningful graph structure simultaneously. Our code and models are made publicly available at https://github.com/alipay/RGSL.git.
 

会议录出版者Elsevier
会议录出版地Elsevier
源URL[http://ir.ia.ac.cn/handle/173211/48519]  
专题自动化研究所_智能感知与计算研究中心
通讯作者Wang L(王亮)
作者单位1.中国科学院大学
2.中国科学院自动化研究所
推荐引用方式
GB/T 7714
Yu HY,Li, Ting,Yu WC,et al. Regularized Graph Structure Learning with Semantic Knowledge for Multi-variates Time-Series Forecasting[C]. 见:. 维也纳. 2022.

入库方式: OAI收割

来源:自动化研究所

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