Measuring user influence on Twitter: A survey

Information Processing & Management - Tập 52 Số 5 - Trang 949-975 - 2016
Fabián Riquelme1, Pablo González-Cantergiani1
1CITIAPS - Universidad de Santiago, Chile

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Tài liệu tham khảo

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