基于数据流挖掘的弹性身份欺诈检测

V. Mareeswari, S. Sundareswari
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引用次数: 2

摘要

提出一种新的安全可靠的身份犯罪检测机制,更准确地识别信用卡中的副本。合成身份诈骗是利用可靠但虚假的身份进行诈骗的一种行为,其制作简单,但实时应用较为复杂。检测系统包括公共检测和尖峰检测两层。公共侦查通过发现真实的社会关系来缩小怀疑分数,与合成的社会关系相反是腐败的。它是针对一组固定属性的面向白列表的方法。尖峰检测在重复中发现尖峰以提高怀疑分数,并且对属性具有探测抗性。它是针对可变大小的属性集的面向属性的方法。公共检测和峰值检测都能发现更多类型的攻击,更好地解释不断变化的合法行为,并删除冗余属性。提高身份罪案侦测系统的灵活性,以适应现实情况。需要减少检测和欺诈事件的响应时间。在信用卡应用中,关键部分被限制为身份犯罪。主动相位混合算法是为了减少识别欺诈性身份使用和响应时间的时间限制。
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Data stream mining based resilient identity fraudulent detection
To propose a new safe and secure mechanism to detect identity crimes, more precisely to identify replica in credit card. The synthetic identity fraud is the practice of reliable but false identities which is easy to make but more complicated to apply on real time. Detection system contains two layers which is communal detection and spike detection. Communal detection finds real social relationships to shrink the suspicion score, and is corrupt opposed to synthetic social relationships. It is the white list-oriented approach on a fixed set of attributes. Spike detection finds spikes in duplicates to enhance the suspicion score, and is probe-resistant for attributes. It is the attribute-oriented approach on a variable-size set of attributes. Both communal detection and spike detection become aware of more types of attacks, better account for changing legal behaviour, and remove the redundant attributes. To enhance identity crime detection systems flexible to real world scenario. The response time of the detection and fraud events need to be reduced. In credit card applications the key part is constrained to Identity Crime. Active Phase Blending algorithm is to reduce the time constraints on identifying fraudulent identity usage and response time.
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