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A Rough Set Approach to Data Imputation and Its Application to a Dissolved Gas Analysis Dataset

机译:粗糙集数据插补方法及其在溶解气体分析数据集中的应用

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Missing values are a common occurrence in a number of real world databases, and various statistical methods have been developed to address this problem, which is referred to as missing data imputation. In the detection and prediction of incipient faults in power transformers using Dissolved Gas Analysis (DGA), the problem of missing values is influential and has resulted in inconclusive decision-making. Previous methods used for handling missing data (e.g., Deleting cases with incomplete information or substituting the missing values with estimated mean scores), although simple to implement, are problematic because those methods may result in biased data models. Fortunately, recent advances in theoretical and computational statistics have led to more feasible techniques to address the missing data problem.
机译:缺失值是许多现实世界数据库中的常见现象,并且已经开发出各种统计方法来解决此问题,这被称为缺失数据归因。在使用溶解气体分析(DGA)进行电力变压器早期故障的检测和预测中,缺失值的问题具有影响力,并导致决策无定论。用于处理缺失数据的先前方法(例如,删除信息不完整的案例或用估计的平均分数替换缺失值)虽然易于实现,但存在问题,因为这些方法可能会导致数据模型有偏差。幸运的是,理论和计算统计方面的最新进展已导致更可行的技术来解决丢失的数据问题。

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