用抽样方法处理缺失数据问题

Rima Houari, A. Bounceur, A. Tari, M. T. Kecha
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引用次数: 20

摘要

丢失数据用例是所有类型的统计分析中的一个问题,并且几乎在所有应用程序领域都会出现。本文研究了几种方案来克服数据挖掘任务中缺失值所产生的缺点,其中最著名的是基于预处理的方案,以前称为imputation。为了提高数据挖掘过程的质量和效率,本文提出了一种基于采样技术的多重插值方法来处理缺失值问题。本文提出的方法与一些插值技术进行了良好的比较,并且在大规模的实验基准上优于现有的方法,从机器学习存储库中获取的波形数据集和不同的缺失值率(直到95%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handling Missing Data Problems with Sampling Methods
Missing data cases are a problem in all types of statistical analyses and arise in almost all application domains. Several schemes have been studied in this paper to overcome the drawbacks produced by missing values in data mining tasks, one of the most well known is based on pre processing, formerly known as imputation. In this work, we propose a new multiple imputation approach based on sampling techniques to handle missing values problems, in order to improving the quality and efficiency of data mining process. The proposed method is favourably compared with some imputation techniques and outperforms the existing approaches using an experimental benchmark on a large scale, waveform dataset taken from machine learning repository and different rate of missing values (till 95%).
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