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Machine learning ensemble methods for prospective hantavirus risk prediction: integrating environmental and epidemiological data

Academic Article
Publication Date:
2026
Short description:
Machine learning ensemble methods for prospective hantavirus risk prediction: integrating environmental and epidemiological data / Ferrara, Massimiliano. - In: APPLIED MATHEMATICAL SCIENCES. - ISSN 1314-7552. - 20:4(2026), pp. 177-183. [10.12988/ams.2026.919334]
abstract:
We develop an ensemble machine learning framework integrating environmental, ecological, and socioeconomic variables to enable prospective hantavirus risk prediction. Trained on 689 laboratory-confirmed cases from three United States jurisdictions, the ensemble of random forest, gradient boosting, support vector machine, and logistic regression classifiers achieves area under the receiver operating characteristic curve of 0.92 on independent test data. Shapley additive explanations identify precipitation variability, land-use patterns, and rodent species richness as dominant predictors, with substantial contributions from socioeconomic determinants.
Iris type:
1.1 Articolo in rivista
List of contributors:
Ferrara, Massimiliano
Authors of the University:
FERRARA Massimiliano
Handle:
https://iris.unirc.it/handle/20.500.12318/167286
Full Text:
https://iris.unirc.it//retrieve/handle/20.500.12318/167286/528863/Ferrara_2026_AMS_Risk%20Prediction_editor.pdf
Published in:
APPLIED MATHEMATICAL SCIENCES
Journal
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https://www.m-hikari.com/ams/ams-2026/ams-1-4-2026/919334.html
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