Deteksi bot spammer twitter berbasis time interval entropy dan global vectors for word representations tweet’s hashtag

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Abstract

Spam spammers are users' misuse of using Twitter to spread spam messages in accordance with user wishes. The purpose of spam is to reach the required trending topic. This study proposes detection of bot spammers on Twitter based on Time Interval Entropy and global vectors for word representations (Glove). Time Interval Entropy is used to classify bot accounts based on the tweet's time series, while glove views the co-occurrence of tweet words with Hashtags for classification processes using the Convolutional Neural Network (CNN). This study uses Twitter API data from 18 bot accounts and 14 legitimacy accounts with 1000 tweets per account. The best results of recall, precision, and f-measure were 100%respectively. This proves that Glove and Time Interval Entropy successfully detects spams, with Hash tags able to increase the detection of bot spammers.

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CITATION STYLE

APA

Priyatno, A. M., Muttaqi, M. M., Syuhada, F., & Arifin, A. Z. (2019). Deteksi bot spammer twitter berbasis time interval entropy dan global vectors for word representations tweet’s hashtag. Register: Jurnal Ilmiah Teknologi Sistem Informasi, 5(1), 37–46. https://doi.org/10.26594/register.v5i1.1382

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