Predictive Modeling for Imbalanced Big Data in SAS Enterprise Miner and R

Son Nguyen, A. Olinsky, John T. Quinn, Phyllis A. Schumacher
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引用次数: 10

Abstract

There have been a variety of predictive models capable of handling binary targets, ranging from traditional logistic regression to modern neural networks. However, when the target variable represents a rare event, these models might not be appropriate as they assume that the distribution in the target variable is balanced. In this article, the impact of multiple resampling methods on conventional predictive models is studied. These resampling techniques include the methods of oversampling of the rare events, undersampling of the common events in the data, and synthetic minority over-sampling technique (SMOTE). The predictive models of decision trees, logistic regression and rule induction are applied with SAS Enterprise Miner (EM) software to the revised data. The studied data set is of home mortgage applications which includes a target variable with an occurrence rate of the rare event being 0.8%. The authors varied the percentage of the rare event from the original of 0.8% up to 50% and monitored the associated performances of the three predictive models to see which one worked the best.
基于SAS Enterprise Miner和R的不平衡大数据预测建模
有各种各样的预测模型能够处理二进制目标,从传统的逻辑回归到现代神经网络。然而,当目标变量表示罕见事件时,这些模型可能不合适,因为它们假设目标变量中的分布是平衡的。本文研究了多种重采样方法对传统预测模型的影响。这些重采样技术包括罕见事件的过采样方法、数据中常见事件的欠采样方法和合成少数过采样技术(SMOTE)。利用SAS Enterprise Miner (EM)软件对修正后的数据应用决策树、逻辑回归和规则归纳法的预测模型。研究的数据集是住房抵押贷款申请,其中包括一个目标变量,罕见事件的发生率为0.8%。作者改变了罕见事件的百分比,从最初的0.8%到50%,并监测了三种预测模型的相关表现,看看哪一种效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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