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Retracted: Spam Detection for Social Media Networks Using Machine Learning

2022· article· en· 10 citations· W4293087581 sur OpenAlex· 10.1109/icaccs54159.2022.9785149

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Dossier post-publication

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Résumé

People frequently examine internet product reviews before purchasing a product. More merchants aim to deceive users in order to earn a profit. Because customers are misled in this way, it's critical to be aware of and delete fraudulent reviews. This study examines machine learning-based spam detection approaches and discusses their general perspectives and outcomes. Knowing how important customer reviews are to a product's success, marketers frequently try to fool customers by publishing phoney remarks. Merchants have the option of posting updates themselves or hiring others to do so for them. Comment or review spam is the practice of sending out false updates. Spam senders might be recruited to leave favorable or negative reviews that harm competitor business. By 2020, the Canadian Competition Bureau gave a warning to its citizens officially, stating that they should be careful of fraudulent reviews and estimating that one off three of online reviews is fake. Poll fiction taken from more than twenty-five thousand participants by 2020 claims that more than seventy percent of consumers trust online reviews. As a result, spam reviews are a major source of concern nowadays. Based on the goal of the proposed techniques, the majority of the published articles dealing with this subject can be segregated into three. Tactics can be used to get spam reviews, individual spam senders, or spams sent by groups. Because the spam sent in group methods haven't been thoroughly investigated; they aren't discussed in this work. Spam detection is a machine learning issue that requires supervision. This means you'll need to give your machine learning model a set of spam and ham message examples and tell it to look for the relevant patterns that distinguish the two groups. Most email service providers have large databases of labelled emails.

Récupéré en direct depuis OpenAlex et désinversé. Les résumés ne sont pas conservés dans cette base de données : les index inversés représentent 8,6 Go des 9,3 Go de texte de la base, et le serveur dispose de 13 Go libres.

La notice

Revue
2022 8th International Conference on Advanced Computing and Communication Systems (ICACCS)
Thématique
Spam and Phishing Detection
Domaine
Computer Science
Établissements canadiens
Organismes subventionnaires
Mots-clés
SpammingHarmInternet privacyPurchasingForum spamProduct (mathematics)Computer scienceThe InternetOrder (exchange)PublishingProfit (economics)Competition (biology)Social mediaComputer securitySpambotAdvertisingBusinessWorld Wide WebMarketingPsychologyPolitical science
Résumé présent dans OpenAlex
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