DETEKSI EMOSI MEDIA SOSIAL MENGGUNAKAN TERM FREQUENCY- INVERSE DOCUMENT FREQUENCY
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a) Buku : O. W. Purbo, 2019, Text Mining Analisis MedSos Kekuatan Brand dan Intelejen di Internet, Andi, Yogyakarta.
DOI: http://dx.doi.org/10.22303/csrid.11.3.2019.140-148
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