Reformulating land-use regression method as sign-constrained regularized regressions: Advantages and improvements

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초록

Land-use regression is a popular method for predicting ambient pollutant concentrations at points of interest where no measurements are taken. However, the model-building process is complicated, and systematically understanding when and how the process works is difficult. To overcome these limitations, we reformulate the existing land use regression method as a sign-constrained regression problem with an explicit objective function to be minimized. This novel formulation always leads to estimated regression coefficients that satisfy the predefined direction based on subject matter knowledge while simultaneously substantially improving the prediction performance of the existing land-use regression method. The advantages of the proposed sign-constrained regression method are confirmed through a numerical study and real data analysis.

키워드

Land use regressionSign constraintsPenalized regression methodsPredictionInterpretabilityAIR-POLLUTIONPARTICULATE MATTERSPATIAL VARIABILITYNITROGEN-OXIDESSELECTIONMODELSMORTALITYNO2ASSOCIATIONSEUROPE
제목
Reformulating land-use regression method as sign-constrained regularized regressions: Advantages and improvements
저자
Kwon, Soon-SunChoi, HosikLee, WhanheeKim, YeonjinKim, Hwan-CheolLee, Woojoo
DOI
10.1016/j.envsoft.2023.105653
발행일
2023-04
유형
Article
저널명
Environmental Modelling and Software
162