基于自适应粒子群算法的信用卡欺诈检测

Suman Arora, Dharminder Kumar
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引用次数: 4

摘要

欺诈侦查是对一般发生在商业组织中的犯罪活动的侦查。发现这种欺诈行为可以防止巨大的经济损失。信用卡诈骗主要取决于信用卡的使用情况、不寻常的交易行为或信用卡上的任何未经授权的活动。聚类过程可以将数据划分为多个子集,这对信用卡欺诈检测非常有帮助,因为离群值可能比常见情况更有趣。自组织映射SOM是一种高效的无监督聚类技术,适用于处理大型高维数据集。粒子群优化是另一种基于群体智能的随机优化技术。在本研究中,我们将这两种方法结合起来,提出了一种新的自组织粒子群优化SOPSO方法用于信用卡欺诈检测。为了应用我们的方法,我们给出了一个实例,并将其结果与以往的方法进行了比较。以往的研究存在时间和空间复杂性、误报率和监督技术等问题。该方法实现了优化技术和无监督方法的结合,具有较低的时间和空间复杂度和较低的误报率。在我们的方法中也实现了域独立性。
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Hybridization of SOM and PSO for Detecting Fraud in Credit Card
Fraud Detection is a detection of criminal activity that generally occurs in commercial organization. Detection of such fraud can prevent a great economic loss. Credit card fraud depends upon usage of card, its unusual transactions behavior or any unauthorized activity on a credit card. Clustering process can divide the data into subsets and it can be very helpful in credit card fraud detection where outlier may be more interesting than common cases. Self-organizing Map SOM is unsupervised clustering technique which is very efficient and handling large and high dimensional dataset. Particle Swarm Optimization PSO is another stochastic optimization technique based on intelligent of swarms. In the present study, we combine these two methods and present a new hybrid approach self-organizing Particle Swarm Optimization SOPSO in detection of credit card fraud. In order to apply our method, we demonstrated an example and its results are compared with previous techniques. Some challenges shown in the previous researches such as time and space complexity, false positive rate and supervised techniques. Our approach is efficient as it implements one of the optimization technique and unsupervised approach which results in less time and space complexity and false positive rate is very low. Domain independency is also achieved in our approach.
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