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A mathematical model to study the 2014–2015 large-scale dengue epidemics in Kaohsiung and Tainan cities in Taiwan, China. (English) Zbl 1497.92285


MSC:

92D30 Epidemiology
34C60 Qualitative investigation and simulation of ordinary differential equation models

Software:

pomp

References:

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