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A machine learning method to monitor China's AIDS epidemics with data from Baidu trends.

08:00 EDT 11th July 2018 | BioPortfolio

Summary of "A machine learning method to monitor China's AIDS epidemics with data from Baidu trends."

AIDS is a worrying public health issue in China and lacks timely and effective surveillance. With the diffusion and adoption of the Internet, the 'big data' aggregated from Internet search engines, which contain users' information on the concern or reality of their health status, provide a new opportunity for AIDS surveillance. This paper uses search engine data to monitor and forecast AIDS in China.

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This article was published in the following journal.

Name: PloS one
ISSN: 1932-6203
Pages: e0199697

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