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Title Random Forest Missing Data Approaches
Publication Date
Degree PhD
Discipline/Department Biostatistics (Medicine)
Degree Level doctoral
University/Publisher University of Miami
Abstract Random forest (RF) missing data algorithms are an attractive approach for imputing missing data. They have the desirable properties of being able to handle mixed types of missing data, they are adaptive to interactions and nonlinearity, and they have the potential to scale to big data settings. Currently there are many different RF imputation algorithms, but relatively little guidance about their efficacy. Using a large, diverse collection of data sets, imputation performance of various RF algorithms was assessed under different missing data mechanisms. Algorithms included proximity imputation, on the fly imputation, and imputation utilizing multivariate unsupervised and supervised splittingthe latter class representing a generalization of a new promising imputation algorithm called missForest. Our findings reveal RF imputation to be generally robust with performance improving with increasing correlation. Performance was good under moderate to high missingness, and even (in certain cases) when data was missing not at random. Real data analysis using the RF imputation methods was conducted on the MESA data.
Subjects/Keywords Random Forest; Imputation; MESA data; Missing data
Contributors Hemant Ishwaran; J. Sunil Rao; Lily Wang; Panagiota V. Caralis
Rights Unrestricted - open access
Country of Publication us
Record ID oai:scholarlyrepository.miami.edu:oa_dissertations-2860
Repository miami-diss
Date Retrieved
Date Indexed 2019-01-11
Created Date 2017-05-02 07:00:00

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