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A hybrid and effective learning approach for Click Fraud detection

Thejas G.S., Surya Dheeshjith, S. S. Iyengar, N. R. Sunitha, Prajwal Badrinath

2020Machine Learning with Applications42 citationsDOIOpen Access PDF

Abstract

Click Fraud is a fraudulent act of clicking on pay-per-click advertisements to increase the site’s revenue or to drain revenue from the advertiser. This illegal act has been putting commercial industries in a dilemma for quite some time. These industries think twice before advertising their products on websites and mobile-apps, as many parties try to exploit them. To safely promote their products, there must be an efficient system to detect click fraud. To address this problem, we propose a model called CFXGB (Cascaded Forest and XGBoost). The proposed model, classified under supervised machine learning, is a combination of two learning models used for feature transformation and classification. We showcase its superior performance compared to other related models, and make a comparison with multiple click fraud datasets with varying sizes.

Topics & Concepts

Computer scienceRevenueExploitDilemmaFeature (linguistics)Machine learningClick-through rateArtificial intelligenceComputer securityWorld Wide WebBusinessEpistemologyAccountingLinguisticsPhilosophyImbalanced Data Classification TechniquesText and Document Classification TechnologiesImage Retrieval and Classification Techniques