René's URL Explorer Experiment


Title: [2411.06500] Graph Neural Network Surrogates to leverage Mechanistic Expert Knowledge towards Reliable and Immediate Pandemic Response

Open Graph Title: Graph Neural Network Surrogates to leverage Mechanistic Expert Knowledge towards Reliable and Immediate Pandemic Response

X Title: Graph Neural Network Surrogates to leverage Mechanistic Expert...

Description: Abstract page for arXiv paper 2411.06500: Graph Neural Network Surrogates to leverage Mechanistic Expert Knowledge towards Reliable and Immediate Pandemic Response

Open Graph Description: During the COVID-19 crisis, mechanistic models have guided evidence-based decision making. However, time-critical decisions in a dynamical environment limit the time available to gather supporting evidence. We address this bottleneck by developing a graph neural network (GNN) surrogate of an age-structured and spatially resolved mechanistic metapopulation simulation model. This combined approach complements classical modeling approaches which are mostly mechanistic and purely data-driven machine learning approaches which are often black box. Our design of experiments spans outbreak and persistent-threat regimes, up to three contact change points, and age-structured contact matrices on a spatial graph with 400 nodes representing German counties. We benchmark multiple GNN layers and identify an ARMAConv-based architecture that offers a strong accuracy-runtime trade-off. Across horizons of 30-90 day simulation and prediction, allowing up to three contact change points, the surrogate model attains 10-27 \% mean absolute percentage error (MAPE) while delivering (near) constant runtime with respect to the forecast horizon. Our approach accelerates evaluation by up to 28,670 times compared with the mechanistic model, allowing responsive decision support in time-critical scenarios and straightforward web integration. These results show how GNN surrogates can translate complex metapopulation models into immediate, reliable tools for pandemic response.

X Description: During the COVID-19 crisis, mechanistic models have guided evidence-based decision making. However, time-critical decisions in a dynamical environment limit the time available to gather supporting...

Opengraph URL: https://arxiv.org/abs/2411.06500v4

X: @arxiv

direct link

Domain: doi.org

msapplication-TileColor#da532c
theme-color#ffffff
og:typewebsite
og:site_namearXiv.org
og:image/static/browse/0.3.4/images/arxiv-logo-fb.png
og:image:secure_url/static/browse/0.3.4/images/arxiv-logo-fb.png
og:image:width1200
og:image:height700
og:image:altarXiv logo
twitter:cardsummary
twitter:imagehttps://static.arxiv.org/icons/twitter/arxiv-logo-twitter-square.png
twitter:image:altarXiv logo
citation_titleGraph Neural Network Surrogates to leverage Mechanistic Expert Knowledge towards Reliable and Immediate Pandemic Response
citation_authorKühn, Martin J.
citation_date2024/11/10
citation_online_date2026/01/14
citation_pdf_urlhttps://arxiv.org/pdf/2411.06500
citation_arxiv_id2411.06500
citation_abstractDuring the COVID-19 crisis, mechanistic models have guided evidence-based decision making. However, time-critical decisions in a dynamical environment limit the time available to gather supporting evidence. We address this bottleneck by developing a graph neural network (GNN) surrogate of an age-structured and spatially resolved mechanistic metapopulation simulation model. This combined approach complements classical modeling approaches which are mostly mechanistic and purely data-driven machine learning approaches which are often black box. Our design of experiments spans outbreak and persistent-threat regimes, up to three contact change points, and age-structured contact matrices on a spatial graph with 400 nodes representing German counties. We benchmark multiple GNN layers and identify an ARMAConv-based architecture that offers a strong accuracy-runtime trade-off. Across horizons of 30-90 day simulation and prediction, allowing up to three contact change points, the surrogate model attains 10-27 \% mean absolute percentage error (MAPE) while delivering (near) constant runtime with respect to the forecast horizon. Our approach accelerates evaluation by up to 28,670 times compared with the mechanistic model, allowing responsive decision support in time-critical scenarios and straightforward web integration. These results show how GNN surrogates can translate complex metapopulation models into immediate, reliable tools for pandemic response.

Links:

Skip to main contenthttps://doi.org/10.48550/arXiv.2411.06500#content
https://www.cornell.edu/
member institutionshttps://info.arxiv.org/about/ourmembers.html
Donatehttps://info.arxiv.org/about/donate.html
https://doi.org/IgnoreMe
https://doi.org/
cshttps://doi.org/list/cs/recent
Helphttps://info.arxiv.org/help
Advanced Searchhttps://arxiv.org/search/advanced
https://arxiv.org/
https://www.cornell.edu/
Loginhttps://arxiv.org/login
Help Pageshttps://info.arxiv.org/help
Abouthttps://info.arxiv.org/about
v1https://arxiv.org/abs/2411.06500v1
Agatha Schmidthttps://arxiv.org/search/cs?searchtype=author&query=Schmidt,+A
Henrik Zunkerhttps://arxiv.org/search/cs?searchtype=author&query=Zunker,+H
Alexander Heinleinhttps://arxiv.org/search/cs?searchtype=author&query=Heinlein,+A
Martin J. Kühnhttps://arxiv.org/search/cs?searchtype=author&query=K%C3%BChn,+M+J
View PDFhttps://doi.org/pdf/2411.06500
HTML (experimental)https://arxiv.org/html/2411.06500v4
arXiv:2411.06500https://arxiv.org/abs/2411.06500
arXiv:2411.06500v4https://arxiv.org/abs/2411.06500v4
https://doi.org/10.48550/arXiv.2411.06500https://doi.org/10.48550/arXiv.2411.06500
view emailhttps://doi.org/show-email/c60e65da/2411.06500
[v1]https://doi.org/abs/2411.06500v1
[v2]https://doi.org/abs/2411.06500v2
[v3]https://doi.org/abs/2411.06500v3
View PDFhttps://doi.org/pdf/2411.06500
HTML (experimental)https://arxiv.org/html/2411.06500v4
TeX Source https://doi.org/src/2411.06500
view licensehttp://arxiv.org/licenses/nonexclusive-distrib/1.0/
< prevhttps://doi.org/prevnext?id=2411.06500&function=prev&context=cs.LG
next >https://doi.org/prevnext?id=2411.06500&function=next&context=cs.LG
newhttps://doi.org/list/cs.LG/new
recenthttps://doi.org/list/cs.LG/recent
2024-11https://doi.org/list/cs.LG/2024-11
cshttps://doi.org/abs/2411.06500?context=cs
q-biohttps://doi.org/abs/2411.06500?context=q-bio
q-bio.PEhttps://doi.org/abs/2411.06500?context=q-bio.PE
NASA ADShttps://ui.adsabs.harvard.edu/abs/arXiv:2411.06500
Google Scholarhttps://scholar.google.com/scholar_lookup?arxiv_id=2411.06500
Semantic Scholarhttps://api.semanticscholar.org/arXiv:2411.06500
http://www.bibsonomy.org/BibtexHandler?requTask=upload&url=https://arxiv.org/abs/2411.06500&description=Graph Neural Network Surrogates to leverage Mechanistic Expert Knowledge towards Reliable and Immediate Pandemic Response
https://reddit.com/submit?url=https://arxiv.org/abs/2411.06500&title=Graph Neural Network Surrogates to leverage Mechanistic Expert Knowledge towards Reliable and Immediate Pandemic Response
What is the Explorer?https://info.arxiv.org/labs/showcase.html#arxiv-bibliographic-explorer
What is Connected Papers?https://www.connectedpapers.com/about
What is Litmaps?https://www.litmaps.co/
What are Smart Citations?https://www.scite.ai/
What is alphaXiv?https://alphaxiv.org/
What is CatalyzeX?https://www.catalyzex.com
What is DagsHub?https://dagshub.com/
What is GotitPub?http://gotit.pub/faq
What is Huggingface?https://huggingface.co/huggingface
What is Papers with Code?https://paperswithcode.com/
What is ScienceCast?https://sciencecast.org/welcome
What is Replicate?https://replicate.com/docs/arxiv/about
What is Spaces?https://huggingface.co/docs/hub/spaces
What is TXYZ.AI?https://txyz.ai
What are Influence Flowers?https://influencemap.cmlab.dev/
What is CORE?https://core.ac.uk/services/recommender
What is IArxiv?https://iarxiv.org/about
Learn more about arXivLabshttps://info.arxiv.org/labs/index.html
Which authors of this paper are endorsers?https://doi.org/auth/show-endorsers/2411.06500
Disable MathJaxjavascript:setMathjaxCookie()
What is MathJax?https://info.arxiv.org/help/mathjax.html
Abouthttps://info.arxiv.org/about
Helphttps://info.arxiv.org/help
Contacthttps://info.arxiv.org/help/contact.html
Subscribehttps://info.arxiv.org/help/subscribe
Copyrighthttps://info.arxiv.org/help/license/index.html
Privacy Policyhttps://info.arxiv.org/help/policies/privacy_policy.html
Web Accessibility Assistancehttps://info.arxiv.org/help/web_accessibility.html
arXiv Operational Status https://status.arxiv.org

Viewport: width=device-width, initial-scale=1


URLs of crawlers that visited me.