Publication | Closed Access
Crowd Fraud Detection in Internet Advertising
70
Citations
18
References
2015
Year
Unknown Venue
Fraud DetectionEngineeringDigital MarketingTargeted AdvertisingInformation ForensicsInternet AdvertisingComputational Social ScienceData ScienceData MiningCrowd FraudManagementOnline AdvertisingStatisticsSocial Network AnalysisKnowledge DiscoveryComputer ScienceCrowdsourcingAdvertisingMarketingCrowd Fraud DetectionCrowd ComputingInteractive MarketingSocial ComputingNonparametric Algorithm
The rise of crowdsourcing brings new types of malpractices in Internet advertising. One can easily hire web workers through malicious crowdsourcing platforms to attack other advertisers. Such human generated crowd frauds are hard to detect by conventional fraud detection methods. In this paper, we carefully examine the characteristics of the group behaviors of crowd fraud and identify three persistent patterns, which are moderateness, synchronicity and dispersivity. Then we propose an effective crowd fraud detection method for search engine advertising based on these patterns, which consists of a constructing stage, a clustering stage and a filtering stage. At the constructing stage, we remove irrelevant data and reorganize the click logs into a surfer-advertiser inverted list; At the clustering stage, we define the sync-similarity between surfers' click histories and transform the coalition detection to a clustering problem, solved by a nonparametric algorithm; and finally we build a dispersity filter to remove false alarm clusters. The nonparametric nature of our method ensures that we can find an unbounded number of coalitions with nearly no human interaction. We also provide a parallel solution to make the method scalable to Web data and conduct extensive experiments. The empirical results demonstrate that our method is accurate and scalable.
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