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Industry Engineering & Materials Science
Costs Engineering & Materials Science
Equalizers Engineering & Materials Science
Communication Engineering & Materials Science
research Social Sciences
Scheduling Engineering & Materials Science
Innovation Engineering & Materials Science
data Social Sciences

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Research Output 1980 2017

A Comparison between spatial econometric models and random forest for modeling fire occurrence

Song, C., Kwan, M. P., Song, W. & Zhu, J. May 14 2017 In : Sustainability (Switzerland). 9, 5, 819

Research output: Contribution to journalArticle

model
Fires
forest
econometrics
Autocorrelation

A continuum approximation approach to the dynamic facility location problem in a growing market

Wang, X., Lim, M. K. & Ouyang, Y. 2017 In : Transportation Science. 51, 1, p. 343-357 15 p.

Research output: Contribution to journalArticle

facility
location
model
problem
time

Advancing analytical methods for urban metabolism studies

Li, H. & Kwan, M. P. 2017 In : Resources, Conservation and Recycling.

Research output: Contribution to journalArticle

metabolism
Metabolism
visualization
GIS
Visualization