Missing data imputation by the aid of features similarities

S. Mostafa
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引用次数: 9

Abstract

The missing data is likely to occur in statistical analyses. The quality of the data is affected by the used imputation method. In this paper, a method is proposed to impute the missing data on variables of interest (i.e., recipient) using observed values from other variables (i.e., donors). Some existing methods rely upon only the recipient (e.g., unconditional means), others rely on the recipient and one donor (i.e., interpolation). The proposed method depends on the similarities of the values in the donor to impute the missing data in the recipient. If the similarities are not sufficient to impute all missing values, another method is combined with the proposed method to impute the residual missing data. The proposed approach is straightforward and can be combined with existing methods. The empirical study validated the superiority of the proposed approach and showed that it can significantly improve the quality of data. In addition, the improvement is more remarkable when the missing values ratio is greater.
利用特征相似性对缺失数据进行补全
在统计分析中很可能出现数据缺失。数据的质量受到所采用的插值方法的影响。本文提出了一种方法,利用其他变量(即供体)的观测值对感兴趣的变量(即接受者)进行缺失数据的推算。现有的一些方法仅依赖于受赠者(例如,无条件手段),其他方法依赖于受赠者和一个供者(例如,插值)。所提出的方法依赖于供体中值的相似性来推算供体中缺失的数据。如果相似度不足以估算所有缺失值,则将另一种方法与所提方法结合估算剩余缺失数据。该方法简单明了,可与现有方法相结合。实证研究验证了该方法的优越性,并表明该方法可以显著提高数据质量。此外,缺失值比率越大,改进效果越显著。
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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