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A profit-driven Artificial Neural Network (ANN) with applications to fraud detection and direct marketing

机译:利润驱动的人工神经网络(ANN),可应用于欺诈检测和直接营销

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摘要

The rapid growth in data capture and computational power has led to an increasing focus on data-driven research. So far, most of the research is focused on predictive modeling using statistical optimization, while profit maximization has been given less priority. It is exactly this gap that will be addressed in this study by taking a profit-driven approach to develop a profit-driven Artificial Neural Network (ANN) classification technique. In order to do this, we have first introduced an ANN model with a new penalty function which gives variable penalties to the misclassification of instances considering their individual importance (profit of correctly classification and/or cost of misclassification) and then we have considered maximizing the total net profit. In order to generate individual penalties, we have modified the sum of squared errors (SSE) function by changing its values with respect to profit of each instance. We have implemented different versions of ANN of which five of them are new ones contributed in this study and two benchmarks from relevant literature. We appraise the effectiveness of the proposed models on two real-life data sets from fraud detection and a University of California Irvine (UCI) repository data set about bank direct marketing. For the comparison, we have considered both statistical and profit-driven performance metrics. Empirical results revealed that, although in most cases the statistical performance of new models are not better than previous ones, they turn out to be better when profit is the concern. (C) 2015 Elsevier B.V. All rights reserved.
机译:数据捕获和计算能力的快速增长导致人们越来越重视数据驱动的研究。到目前为止,大多数研究都集中在使用统计优化的预测模型上,而利润最大化的优先级却较低。正是本差距将通过采用利润驱动的方法来开发利润驱动的人工神经网络(ANN)分类技术来解决。为了做到这一点,我们首先引入了具有新惩罚函数的ANN模型,该模型考虑到实例的个体重要性(正确分类的收益和/或错误分类的成本)对实例的错误分类提供了可变的惩罚,然后我们考虑了最大化总净利润。为了产生单独的惩罚,我们通过更改每个实例获利的值来修改平方误差和(SSE)函数。我们已经实现了ANN的不同版本,其中五个是本研究的新版本,还有两个来自相关文献的基准。我们通过欺诈检测和关于银行直接营销的加州大学尔湾分校(UCI)存储库数据集两个真实数据集评估了所提出模型的有效性。为了进行比较,我们考虑了统计和利润驱动的绩效指标。实证结果表明,尽管在大多数情况下,新模型的统计性能并不比以前的更好,但当考虑到利润时,它们的效果会更好。 (C)2015 Elsevier B.V.保留所有权利。

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