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Feature importance analysis.

Feature importance analysis.

<p>Feature importance analysis using SHAP for three models: (a, d) logistic regression, (b, e) random forest, and (c, f) deep neural network.</p>

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Bibliographic Details
Main Author: Wei Yin (64393) (author)
Other Authors: Sanad H. Ragab (22615302) (author), Michael G. Tyshenko (11719009) (author), Teresa Feria Arroyo (22615305) (author), Tamer Oraby (3073227) (author)
Published: 2025
Subjects:
Ecology
Sociology
Virology
Astronomical and Space Sciences not elsewhere classified
Biological Sciences not elsewhere classified
west nile virus
random forest classifier
potential geographic distribution
perform various tasks
great prediction tools
div >< p
several machine learning
comparing machine learning
called reinforcement learning
dqn ), reinforce
deep neural networks
culex pipiens </
common house mosquito
reinforcement learning performance
predicting species distribution
pipiens </
deep learning
wnv ),
rl ),
deep q
training agents
subtropical regions
study objective
results revealed
primary vector
predictive modeling
logistic regression
limited resources
including q
classification problems
changing environments
borne pathogen
another set
annual precipitation
affects humans
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