首页> 外文会议>International Symposium on Neural Networks(ISNN 2005) pt.2; 20050530-0601; Chongqing(CN) >Novel Questionnaire-Responded Transaction Approach with SVM for Credit Card Fraud Detection
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Novel Questionnaire-Responded Transaction Approach with SVM for Credit Card Fraud Detection

机译:SVM的新型问卷调查响应交易方法用于信用卡欺诈检测

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One of the most potential methods to prevent credit card fraud is the questionnaire-responded transaction (QRT) approach. Unlike traditional approaches founded on past real transaction data, the QRT approach proposes to develop a personalized model to avoid credit card frauds from the initial use of new cards. Though this approach is promising, there are still some issues needed investigating. One of the most important issues concerning the QRT approach is how to predict accurately with only few data. The purpose of this paper is to investigate the prediction accuracy of this approach by using support vector machines (SVMs). Over-sampling, majority voting, and hierarchical SVMs are employed to investigate their influences on the prediction accuracy. Our results show that the QRT approach is effective in obtaining high prediction accuracy. They also show that combined strategies, such as weighting and voting, majority voting, and hierarchical SVMs can increase detection rate considerably.
机译:防止信用卡欺诈的最可能方法之一是问卷调查交易(QRT)方法。与基于过去的真实交易数据建立的传统方法不同,QRT方法建议开发一种个性化模型,以避免初次使用新卡时发生信用卡欺诈。尽管这种方法很有希望,但仍需要调查一些问题。与QRT方法有关的最重要问题之一是如何仅用很少的数据就可以准确地进行预测。本文的目的是通过使用支持向量机(SVM)来研究这种方法的预测准确性。采用过采样,多数投票和分层SVM来调查它们对预测准确性的影响。我们的结果表明,QRT方法可有效地获得较高的预测精度。他们还表明,加权和投票,多数投票和分层SVM等组合策略可以显着提高检测率。

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