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Fraud Detection Model Based on the Discovery Symbolic Classification Rules Extracted from a Neural Network

机译:基于从神经网络中提取的发现符号分类规则的欺诈检测模型

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This paper presents a fraud detection model using data mining techniques such as neural networks and symbolic extraction of classification rules from trained neural network. The neural network is first trained to achieve an accuracy rate, the activation of the values in the hidden layers of the neural network is analyzed and from this analysis are generated classification rules. The proposed approach was tested on a set of data from a Colombian organization for the sending and payment of remittances, in order to identify patterns associated with fraud detection. Similarly the results of the techniques used in the model were compared with other mining techniques such as Decision Trees and Naive Bayes. A prototype software was developed to test the model, which was integrated into RapidMiner tool, which can be used as a tool for academic software.
机译:本文提出了一种使用数据挖掘技术(例如神经网络)和从经过训练的神经网络中对分类规则进行符号提取的欺诈检测模型。首先训练神经网络以达到准确率,分析神经网络隐藏层中的值的激活,并从该分析中生成分类规则。为了确定与欺诈检测相关的模式,对哥伦比亚组织用于汇款和支付汇款的一组数据进行了测试。类似地,将模型中使用的技术的结果与其他挖掘技术(例如决策树和朴素贝叶斯)进行了比较。开发了用于测试模型的原型软件,该软件已集成到RapidMiner工具中,该工具可用作学术软件的工具。

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