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A comparison of imputation methods using machine learning models

Heajung Suh, Jongwoo Song

2023Communications for Statistical Applications and Methods11 citationsDOIOpen Access PDF

Abstract

Handling missing values in data analysis is essential in constructing a good prediction model.The easiest way to handle missing values is to use complete case data, but this can lead to information loss within the data and invalid conclusions in data analysis.Imputation is a technique that replaces missing data with alternative values obtained from information in a dataset.Conventional imputation methods include K-nearest-neighbor imputation and multiple imputations.Recent methods include missForest, missRanger, and mixgb ,all which use machine learning algorithms.This paper compares the imputation techniques for datasets with mixed datatypes in various situations, such as data size, missing ratios, and missing mechanisms.To evaluate the performance of each method in mixed datasets, we propose a new imputation performance measure (IPM) that is a unified measurement applicable to numerical and categorical variables.We believe this metric can help find the best imputation method.Finally, we summarize the comparison results with imputation performances and computational times.

Topics & Concepts

Imputation (statistics)Artificial intelligenceComputer scienceStatisticsMachine learningMathematicsPattern recognition (psychology)Missing dataStatistical Methods and Bayesian InferenceStatistical Methods and InferenceAdvanced Statistical Methods and Models