Wise in Vaccine Allocation
Abstract: The paper uses machine learning and mathematical modeling to predict future vaccine distribution and solve the problem of allocating vaccines to different types of hospitals. They collected data and analyzed it, finding factors such as nearby residents, transportation, and medical personnel that impact distribution. They used the results to create a model and allocate vaccines to central and community hospitals and health centers in Hangzhou Gongshu District and Harbin Daoli District based on the model. They provide an explanation for the vaccine distribution based on their model and conclusions.
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