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Are deep learning models superior for missing data imputation in surveys? Evidence from an empirical comparison

Publication ,  Journal Article
Methodology, S; Akande, O; Poulos, J; Li, F
Published in: Survey Methodology
January 1, 2022

Multiple imputation (MI) is a popular approach for dealing with missing data arising from non-response in sample surveys. Multiple imputation by chained equations (MICE) is one of the most widely used MI algorithms for multivariate data, but it lacks theoretical foundation and is computationally intensive. Recently, missing data imputation methods based on deep learning models have been developed with encouraging results in small studies. However, there has been limited research on evaluating their performance in realistic settings compared to MICE, particularly in big surveys. We conduct extensive simulation studies based on a subsample of the American Community Survey to compare the repeated sampling properties of four machine learning based MI methods: MICE with classification trees, MICE with random forests, generative adversarial imputation networks, and multiple imputation using denoising autoencoders. We find the deep learning imputation methods are superior to MICE in terms of computational time. However, with the default choice of hyperparameters in the common software packages, MICE with classification trees consistently outperforms, often by a large margin, the deep learning imputation methods in terms of bias, mean squared error, and coverage under a range of realistic settings.

Duke Scholars

Published In

Survey Methodology

EISSN

1492-0921

ISSN

0714-0045

Publication Date

January 1, 2022

Volume

48

Issue

2

Start / End Page

375 / 399

Related Subject Headings

  • Statistics & Probability
  • 4905 Statistics
  • 0104 Statistics
 

Citation

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Methodology, S., Akande, O., Poulos, J., & Li, F. (2022). Are deep learning models superior for missing data imputation in surveys? Evidence from an empirical comparison. Survey Methodology, 48(2), 375–399.
Methodology, S., O. Akande, J. Poulos, and F. Li. “Are deep learning models superior for missing data imputation in surveys? Evidence from an empirical comparison.” Survey Methodology 48, no. 2 (January 1, 2022): 375–99.
Methodology S, Akande O, Poulos J, Li F. Are deep learning models superior for missing data imputation in surveys? Evidence from an empirical comparison. Survey Methodology. 2022 Jan 1;48(2):375–99.
Methodology, S., et al. “Are deep learning models superior for missing data imputation in surveys? Evidence from an empirical comparison.” Survey Methodology, vol. 48, no. 2, Jan. 2022, pp. 375–99.
Methodology S, Akande O, Poulos J, Li F. Are deep learning models superior for missing data imputation in surveys? Evidence from an empirical comparison. Survey Methodology. 2022 Jan 1;48(2):375–399.

Published In

Survey Methodology

EISSN

1492-0921

ISSN

0714-0045

Publication Date

January 1, 2022

Volume

48

Issue

2

Start / End Page

375 / 399

Related Subject Headings

  • Statistics & Probability
  • 4905 Statistics
  • 0104 Statistics