Missing data analyses: a hybrid multiple imputation algorithm using Gray System Theory and entropy based on clustering

作者:Jing Tian, Bing Yu, Dan Yu, Shilong Ma

摘要

Researchers and practitioners who use databases usually feel that it is cumbersome in knowledge discovery or application development due to the issue of missing data. Though some approaches can work with a certain rate of incomplete data, a large portion of them demands high data quality with completeness. Therefore, a great number of strategies have been designed to process missingness particularly in the way of imputation. Single imputation methods initially succeeded in predicting the missing values for specific types of distributions. Yet, the multiple imputation algorithms have maintained prevalent because of the further promotion of validity by minimizing the bias iteratively and less requirement on prior knowledge to the distributions.

论文关键词:Missing data, Multiple imputation, Gray System Theory, Entropy, Clustering

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论文官网地址:https://doi.org/10.1007/s10489-013-0469-x