Litcius/Paper detail

Gradient boosting learning for fraudulent publisher detection in online advertising

Deepti Sisodia, Dilip Singh Sisodia

2020Data Technologies and Applications28 citationsDOI

Abstract

Purpose Analysis of the publisher's behavior plays a vital role in identifying fraudulent publishers in the pay-per-click model of online advertising. However, the vast amount of raw user click data with missing values pose a challenge in analyzing the conduct of publishers. The presence of high cardinality in categorical attributes with multiple possible values has further aggrieved the issue. Design/methodology/approach In this paper, gradient tree boosting (GTB) learning is used to address the challenges encountered in learning the publishers' behavior from raw user click data and effectively classifying fraudulent publishers. Findings The results demonstrate that the GTB effectively classified fraudulent publishers and exhibited significantly improved performance as compared to other learning methods in terms of average precision (60.5 %), recall (57.8 %) and f-measure (59.1%). Originality/value The experiments were conducted using publicly available multiclass raw user click dataset and eight other imbalanced datasets to test the GTB's generalizing behavior, while training and testing were done using 10-fold cross-validation. The performance of GTB was evaluated using average precision, recall and f-measure. The performance of GTB learning was also compared with eleven other state-of-the-art individual and ensemble classification models.

Topics & Concepts

Boosting (machine learning)Computer scienceCategorical variableCardinality (data modeling)Machine learningArtificial intelligenceGradient boostingEnsemble learningRecallRaw dataOriginalityUsabilityData miningRandom forestHuman–computer interactionLawCreativityPhilosophyPolitical scienceProgramming languageLinguisticsImbalanced Data Classification TechniquesSpam and Phishing DetectionText and Document Classification Technologies