Publication | Open Access
Decision Making Support System for Managing Advertisers By Ad Fraud Detection
14
Citations
5
References
2021
Year
Fraud DetectionEngineeringMachine LearningBusiness IntelligenceDigital MarketingTargeted AdvertisingTrend PredictionLead ClassificationBusiness AnalyticsWeb AnalyticsWebsite TrafficText MiningSpam FilteringComputational Social ScienceInformation RetrievalData ScienceData MiningManagementOnline AdvertisingMouse ClicksDecision Support SystemsComputer ScienceAdvertisingMarketingWeb TrendSupport SystemAd Fraud DetectionDecision Technology
Abstract Efficient lead management allows substantially enhancing online channel marketing programs. In the paper, we classify website traffic into human- and bot-origin ones. We use feedforward neural networks with embedding layers. Moreover, we use one-hot encoding for categorical data. The data of mouse clicks come from seven large retail stores and the data of lead classification from three financial institutions. The data are collected by a JavaScript code embedded into HTML pages. The three proposed models achieved relatively high accuracy in detecting artificially generated traffic.
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