MSGNN:用于流行病预测的多尺度时空图神经网络

IF 2.8 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Data Mining and Knowledge Discovery Pub Date : 2024-05-21 DOI:10.1007/s10618-024-01035-w
Mingjie Qiu, Zhiyi Tan, Bing-Kun Bao
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引用次数: 0

摘要

传染病预测一直是一个重点,并被证明是控制流行病的关键。最近的一个趋势是开发基于图神经网络(GNN)的预测模型。然而,现有的基于图神经网络的方法存在两个主要局限:(1)目前的模型通过缩放图神经网络的深度来拓宽感受野,这不足以保留遥远但与流行病相关的区域之间的长程连接语义。(2)以往的方法只模拟单一空间尺度内的流行病,而忽略了不同尺度下的多尺度流行病模式。针对这些不足,我们基于创新的多尺度视角设计了多尺度时空图神经网络(MSGNN)。具体来说,在所提出的 MSGNN 模型中,我们首先设计了一个新颖的图学习模块,该模块可直接捕捉跨区域流行病信号中的长程连接性,并将其整合到多尺度图中。基于学习到的多尺度图,我们利用新设计的图卷积模块来利用多尺度流行病模式。通过该模块,我们可以挖掘尺度共享模式和特定尺度模式,从而促进多尺度流行病建模。预测美国 COVID-19 新病例的实验结果表明,我们的方法优于现有技术。进一步的分析和可视化也表明,MSGNN 不仅能提供准确的预测结果,还能提供稳健、可解释的预测结果。代码见 https://github.com/JashinKorone/MSGNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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MSGNN: Multi-scale Spatio-temporal Graph Neural Network for epidemic forecasting

Infectious disease forecasting has been a key focus and proved to be crucial in controlling epidemic. A recent trend is to develop forecasting models based on graph neural networks (GNNs). However, existing GNN-based methods suffer from two key limitations: (1) current models broaden receptive fields by scaling the depth of GNNs, which is insufficient to preserve the semantics of long-range connectivity between distant but epidemic related areas. (2) Previous approaches model epidemics within single spatial scale, while ignoring the multi-scale epidemic patterns derived from different scales. To address these deficiencies, we devise the Multi-scale Spatio-temporal Graph Neural Network (MSGNN) based on an innovative multi-scale view. To be specific, in the proposed MSGNN model, we first devise a novel graph learning module, which directly captures long-range connectivity from trans-regional epidemic signals and integrates them into a multi-scale graph. Based on the learned multi-scale graph, we utilize a newly designed graph convolution module to exploit multi-scale epidemic patterns. This module allows us to facilitate multi-scale epidemic modeling by mining both scale-shared and scale-specific patterns. Experimental results on forecasting new cases of COVID-19 in United State demonstrate the superiority of our method over state-of-arts. Further analyses and visualization also show that MSGNN offers not only accurate, but also robust and interpretable forecasting result. Code is available at https://github.com/JashinKorone/MSGNN.

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来源期刊
Data Mining and Knowledge Discovery
Data Mining and Knowledge Discovery 工程技术-计算机:人工智能
CiteScore
10.40
自引率
4.20%
发文量
68
审稿时长
10 months
期刊介绍: Advances in data gathering, storage, and distribution have created a need for computational tools and techniques to aid in data analysis. Data Mining and Knowledge Discovery in Databases (KDD) is a rapidly growing area of research and application that builds on techniques and theories from many fields, including statistics, databases, pattern recognition and learning, data visualization, uncertainty modelling, data warehousing and OLAP, optimization, and high performance computing.
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