2017
DOI: 10.14569/ijacsa.2017.080305
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A Survey of Spam Detection Methods on Twitter

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Cited by 10 publications
(5 citation statements)
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“…In this section we only gave the some account based features. For further and deeply information about other types of features, [1] and [16] We performed account classification with using an ANN. We used four different activation functions and compared the efficiencies of different combinations of these activation functions.…”
Section: Materials and Methods (Materyal Ve Yöntemler)mentioning
confidence: 99%
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“…In this section we only gave the some account based features. For further and deeply information about other types of features, [1] and [16] We performed account classification with using an ANN. We used four different activation functions and compared the efficiencies of different combinations of these activation functions.…”
Section: Materials and Methods (Materyal Ve Yöntemler)mentioning
confidence: 99%
“…By the same way, the tweets of and account or its relations an provide information about its authenticity or its fraud. For this reason, fake account detection are categorized as follows: Detecting with using account based features, detecting with using tweet based features, and detecting with relationship between users [1].…”
Section: Introduction (Gi̇ri̇ş)mentioning
confidence: 99%
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“…The challenge in spam detection is that spammers often use dynamic words that are difficult to detect. Moreover, extracting important features for spam detection can be computationally expensive [26,27]; hence, we did not consider the cost in this study. Chu et al [8,9] applied machine-learning models and discovered that human accounts tended to interact with other human accounts via their tweets, retweets, mentions, hashtags, and direct messaging more often than bots.…”
Section: Literature Reviewmentioning
confidence: 99%
“…In the literature, many methods are proposed for detecting spam accounts in the Twitter social network. The anomaly detection method (ADM), link analysis method (LAM), comparison and contracting method (CCM), deceptive information detection approach (DIDA), following and follower comparison analysis (FFCA), ensemble learning analysis (ELA), account creation time-based analysis (ACTA), using spammer detection tools (USDT), honeypot-based twitter spam detection (HTSD), short message analysis (SMA), trend-topic analysis (TTA), tweet-based spam detection (TSD), graph-based spam detection (GSD), and hybrid spam detection (HSD) are among these methods, which are commonly used approaches to detect spam ( Talha & Kara, 2017 ; Çıtlak, Dörterler & Doğru, 2019 ; Güngör, Ayhan Erdem & Doğru, 2020 ; Rupapara et al, 2021 ; Bouadjenek et al, 2022 ).…”
Section: Introductionmentioning
confidence: 99%