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Imputations for High Missing Rate Data in Covariates via Semi-supervised Learning Approach
2021
figshare.com
Advancements in data collection techniques and the heterogeneity of data resources can yield high percentages of missing observations on variables, such as block-wise missing data. Under missing-data scenarios, traditional methods such as the simple average, k-nearest neighbor, multiple, and regression imputations may lead to results that are unstable or unable be computed. Motivated by the concept of semi-supervised learning (see, e.g., Zhu and Goldberg, 2009 and Chapelle et al., 2010), we
doi:10.6084/m9.figshare.14501350.v1
fatcat:ipzhp4ki7jeifocchchocuwl6u