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   credit card fraud detection using data mining and statistical methods  
   
نویسنده beigi s. ,amin-naseri m.r.
منبع journal of ai and data mining - 2020 - دوره : 8 - شماره : 2 - صفحه:149 -160
چکیده    Due to the today’s advancement in technology and businesses, fraud detection has become a critical component of financial transactions. considering vast amounts of data in large datasets, it becomes more difficult to detect fraud transactions manually. in this work, we propose a combined method using both data mining and statistical tasks, utilizing feature selection, resampling, and cost-sensitive learning for credit card fraud detection. in the first step, useful features are identified using the genetic algorithm. next, the optimal resampling strategy is determined based on the design of experiments and response surface methodologies. finally, the cost-sensitive c4.5 algorithm is used as the base learner in the adaboost algorithm. using a real-time dataset, the results obtained show that applying the proposed method significantly reduces the misclassification cost by at least 14% compared with decision tree, naïve bayes, bayesian network, neural network, and artificial immune system.
کلیدواژه fraud detection ,credit cards ,feature selection ,resampling ,cost-sensitive learning
آدرس tarbiat modares university, faculty of industrial and systems engineering, iran. kosar university of bojnord, faculty of basic science and engineering, industrial engineering department, iran, tarbiat modares university, faculty of industrial and systems engineering, iran
پست الکترونیکی m.r.aminnaseri@gmail.com
 
     
   
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