2022
DOI: 10.3390/ijerph192416602
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Nonlinear Effects of the Neighborhood Environments on Residents’ Mental Health

Abstract: In the context of rapid urbanization and the “Healthy China” strategy, neighborhood environments play an important role in improving mental health among urban residents. While an increasing number of studies have explored the linear relationships between neighborhood environments and mental health, much remains to be revealed about the nonlinear health effects of neighborhood environments, the thresholds of various environmental factors, and the optimal environmental exposure levels for residents. To fill thes… Show more

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Cited by 4 publications
(1 citation statement)
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“…It works by combining decision trees from multiple individuals to optimize model fitting and prediction, and finally make the loss function reach a minimum value or maintain stability. The random forest method has been widely used in environmental health research to study the non-linear threshold relationship [24,25,37,38]. The permutation importance measure introduced by Breiman (2001) can quantify the relative importance of explanatory variables in the prediction results and increase the interpretability of the model [36].…”
Section: Model and Methodologymentioning
confidence: 99%
“…It works by combining decision trees from multiple individuals to optimize model fitting and prediction, and finally make the loss function reach a minimum value or maintain stability. The random forest method has been widely used in environmental health research to study the non-linear threshold relationship [24,25,37,38]. The permutation importance measure introduced by Breiman (2001) can quantify the relative importance of explanatory variables in the prediction results and increase the interpretability of the model [36].…”
Section: Model and Methodologymentioning
confidence: 99%