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Fingerprint Presence Fraud Detection Using Tight Clustering on Employee’s Presence and Activity Data

机译:指纹存在欺诈检测使用员工的存在和活动数据的紧密聚类

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Detecting fraud in fingerprint presence poses a unique challenge as we cannot rely on an existing employee's attribute. Furthermore, analyzing using a supervised algorithm cannot handle unlabeled data [1] that generated uniquely for this case. We study the patterns of employee's presence and activity report data and found that fraud action tends to be closely similar to other fraud action. Therefore, we propose a tight clustering method to detect fraud in fingerprint data using DBSCAN (Density-based spatial clustering of applications with noise) algorithm, as tight distance calculation removes non-fraud data because non-fraud data is generated to be unique naturally.
机译:在指纹存在中检测欺诈构成了独特的挑战,因为我们不能依赖现有的员工的属性。此外,使用监督算法分析无法处理这种情况唯一的未标记数据[1]。我们研究员工的存在和活动报告数据的模式,发现欺诈行为往往与其他欺诈行为密切相关。因此,我们提出了一种紧密的聚类方法来使用DBSCAN(基于密度的空间聚类的噪声)算法来检测指纹数据中的欺诈,因为紧密距离计算消除了非欺诈数据,因为生成了非欺诈数据以自然是唯一的。

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