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引用次数: 0

摘要

离群值检测一直以来都受到数据分析人员的广泛关注,因为它的检测非常具有挑战性。在对数据集进行任何分析之前,需要检测异常值或新病例。根据不同的领域,异常值检测可以节省大量的时间和金钱,或者两者兼而有之。本文在软计算范式下,利用集成技术开发了一种新的离群点检测模型,该模型包括k-逆最近邻(kRNN)、自动关联神经网络(AANN)、反传播自动关联神经网络(CPAANN)和广义回归自动关联神经网络(GRAANN)四种算法作为组成部分。合奏采用四种技术发现的所有异常值的联合。
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Outlier detection via a soft computing hybrid
Outlier detection has been attracting the data analysts in almost every domain for a long time now because their detection is very challenging. Outliers or novel cases need to be detected before any analysis is performed on data set. Depending upon the domain, outlier detection saves a lot of time, money or both. In this paper, we developed a novel outlier detection model using ensembling technique, in the paradigm of soft computing, which includes four algorithms, namely k-Reverse Nearest Neighbor (kRNN), Auto Associative Neural Network (AANN), Counter Propagation Auto Association Neural Network (CPAANN), and Generalized Regression Auto Association Neural network (GRAANN) as constituents. The ensemble takes the union of all the outliers found by the four techniques.
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