Your browser doesn't support javascript.
A Review of Graph Neural Networks in Epidemic Modeling (preprint)
arxiv; 2024.
Preprint em Inglês | PREPRINT-ARXIV | ID: ppzbmed-2403.19852v2
ABSTRACT
Since the onset of the COVID-19 pandemic, there has been a growing interest in studying epidemiological models. Traditional mechanistic models mathematically describe the transmission mechanisms of infectious diseases. However, they often fall short when confronted with the growing challenges of today. Consequently, Graph Neural Networks (GNNs) have emerged as a progressively popular tool in epidemic research. In this paper, we endeavor to furnish a comprehensive review of GNNs in epidemic tasks and highlight potential future directions. To accomplish this objective, we introduce hierarchical taxonomies for both epidemic tasks and methodologies, offering a trajectory of development within this domain. For epidemic tasks, we establish a taxonomy akin to those typically employed within the epidemic domain. For methodology, we categorize existing work into \textit{Neural Models} and \textit{Hybrid Models}. Following this, we perform an exhaustive and systematic examination of the methodologies, encompassing both the tasks and their technical details. Furthermore, we discuss the limitations of existing methods from diverse perspectives and systematically propose future research directions. This survey aims to bridge literature gaps and promote the progression of this promising field. We hope that it will facilitate synergies between the communities of GNNs and epidemiology, and contribute to their collective progress.
Assuntos

Texto completo: Disponível Coleções: Preprints Base de dados: PREPRINT-ARXIV Assunto principal: Doenças Transmissíveis / COVID-19 Idioma: Inglês Ano de publicação: 2024 Tipo de documento: Preprint

Similares

MEDLINE

...
LILACS

LIS


Texto completo: Disponível Coleções: Preprints Base de dados: PREPRINT-ARXIV Assunto principal: Doenças Transmissíveis / COVID-19 Idioma: Inglês Ano de publicação: 2024 Tipo de documento: Preprint