N EllisoF AhmedM AbulaishM HanifK AdewoleN AnuarA KamsinX RuanZ WuH WangS JajodiaG KhuranaL BilgeT StrufeD BalzarottiE KirdaG ChrisK ThomasP VernMG StringhiniC KruegelG VignaZ ChuI WidjajaH WangF AhmedM AbulaishS AdikariK DuttaMA AlsalehM Al-SalmanA AlfayezAlmuhaysinE MumfordS KrishnanGR AnithaR LekshmiM SenthilA KumarM BonatoGraaS LeeJ KimF SedesW ZhangH SunE SetiawanC SusantoJ SantosoS SumpenoM PurnomoM GuptaA BakliwalS AgarwalP MehndirattaR KrithigaE IlavarasanF ConconeG Lo ReM MoranaC RuoccoA AggarwalA RajadesinganP Kumaraguru
Witheverypassingsecondsocialnetworkcommunityisgrowingrapidly,becauseofthat,attackershaveshownkeeninterestinthesekindsofplatformsandwanttodistributemischievouscontentsontheseplatforms.Withthefocus on introducing new set of characteristics and features forcounteractivemeasures,agreatdealofstudieshasresearchedthe possibility of lessening the malicious activities on social medianetworks. This research was to highlight features for identifyingspammers on Instagram and additional features were presentedto improve the performance of different machine learning algorithms. Performance of different machine learning algorithmsnamely, Multilayer Perceptron (MLP), Random Forest (RF), K-Nearest Neighbor (KNN) and Support Vector Machine (SVM)were evaluated on machine learning tools named, RapidMinerand WEKA. The results from this research tells us that RandomForest (RF) outperformed all other selected machine learningalgorithmsonbothselectedmachinelearningtools.OverallRandom Forest (RF) provided best results on RapidMiner. Theseresultsareusefulfortheresearcherswhoarekeentobuildmachine learning models to find out the spamming activities onsocialnetworkcommunities.
Usman Rashid MalikMuhammad Hashim HameedAkmal Rehan
Rasheed, UsmanHameed, Muhammad HashimRehan, Akmal
Nikhil KumarSanket SonowalNISHANT NISHANT