Ad Fraud Measure and Benchmark

user-5d8057ce530c708f9920cdb5(2017)

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摘要
In this chapter, we discuss measures and benchmark datasets commonly used for Ad fraud detection. The measures include fraud detection accuracy, precision, recall, F-measure, and AUC scores which are commonly used to validate the performance of classifiers for classification. In addition, we also summarize several real-world datasets which are currently available for Ad detection and computational advertising research in general.
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关键词
Receiver operating characteristic,False positive rate,Data mining,Recall,Computer science,Computational advertising,True positive rate
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