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Understanding payment card fraud through knowledge extraction from neural networks using large-scale datasets.

机译:通过使用大规模数据集从神经网络中提取知识来了解支付卡欺诈。

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摘要

A novel approach to knowledge extraction from neural network classifiers when applied to payment card fraud detection is proposed. Existing Fraud Management Systems (FMS) use neural network classifiers but do not have the ability to explain their learnt patterns of fraud. Rule extraction from such classifiers with a high level of abstraction and linguistic simplicity is proposed. Decompositional knowledge extraction methods are found to be too reliant on the architecture of the fraud classifer and current pedagogical rule extraction methods produce rules that are not sufficiently comprehensible. In this thesis the Sparse Oracle-based Adaptive Rule (SOAR) pedagogical extraction algorithm is proposed to extract generalising rules that explain patterns of fraud. SOAR uses sensitivity analysis to avoid the exhaustive searches of other pedagogical methods. By projecting into discretised space, polytopes are formed by SOAR covering the class convex hull of the classifier surface. A methodological and verifiable empirical evaluation on publicly available datasets in various domains is undertaken. These results show that SOAR extracts comprehensible rules that are sound from a deep learning neural network. When SOAR is applied to large datasets provided by payment card issuers it discovered new fraud types that were of key interest to payment risk/fraud analysts. SOAR provides an improved understanding of fraud vectors that will lead to a more secure payment process through informed payment fraud prevention steps and this work could therefore alter how fraud management is undertaken in the future.
机译:提出了一种新的从神经网络分类器中提取知识的方法,该方法应用于支付卡欺诈检测。现有的欺诈管理系统(FMS)使用神经网络分类器,但没有能力解释其学到的欺诈模式。提出了从此类分类器中以高度抽象和语言简单性进行规则提取。发现分解知识提取方法过于依赖欺诈分类器的体系结构,并且当前的教学规则提取方法产生的规则不够充分。本文提出了一种基于稀疏Oracle的自适应规则(SOAR)教学法提取算法,以提取解释欺诈模式的泛化规则。 SOAR使用敏感性分析来避免穷举搜索其他教学方法。通过投影到离散空间中,通过覆盖分类器表面的类凸包的SOAR形成多面体。对各个领域的公开数据集进行了方法论和可验证的经验评估。这些结果表明,SOAR可以从深度学习神经网络中提取出可理解的规则。当SOAR应用于支付卡发行者提供的大型数据集时,它发现了新的欺诈类型,这些类型对于支付风险/欺诈分析师而言至关重要。 SOAR可以更好地理解欺诈媒介,通过明智的付款欺诈预防步骤,可以使付款流程更加安全,因此,这项工作可能会改变未来的欺诈管理方式。

著录项

  • 作者单位

    University of Surrey (United Kingdom).;

  • 授予单位 University of Surrey (United Kingdom).;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 610 p.
  • 总页数 610
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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