Epidemiol Health.  2021;43(1):e2021099. 10.4178/epih.e2021099.

Gender differences in under-reporting hiring discrimination in Korea: a machine learning approach

Affiliations
  • 1Department of Public Health Sciences, Graduate School of Korea University, Seoul, Korea
  • 2Department of Mathematical Sciences, Korea Advanced Institute of Science and Technology, Daejeon, Korea
  • 3Department of Social and Behavioral Sciences, Harvard T.H. Chan School of Public Health, Boston, MA, USA
  • 4Center for Community-Based Research, Dana-Farber Cancer Institute, Boston, MA, USA
  • 5Interdisciplinary Program in Precision Public Health, Korea University, Seoul, Korea

Abstract


OBJECTIVES
This study was conducted to examine gender differences in under-reporting hiring discrimination by building a prediction model for workers who responded “not applicable (NA)” to a question about hiring discrimination despite being eligible to answer.
METHODS
Using data from 3,576 wage workers in the seventh wave (2004) of the Korea Labor and Income Panel Study, we trained and tested 9 machine learning algorithms using “yes” or “no” responses regarding the lifetime experience of hiring discrimination. We then applied the best-performing model to estimate the prevalence of experiencing hiring discrimination among those who answered “NA.” Under-reporting of hiring discrimination was calculated by comparing the prevalence of hiring discrimination between the “yes” or “no” group and the “NA” group.
RESULTS
Based on the predictions from the random forest model, we found that 58.8% of the “NA” group were predicted to have experienced hiring discrimination, while 19.7% of the “yes” or “no” group reported hiring discrimination. Among the “NA” group, the predicted prevalence of hiring discrimination for men and women was 45.3% and 84.8%, respectively.
CONCLUSIONS
This study introduces a methodological strategy for epidemiologic studies to address the under-reporting of discrimination by applying machine learning algorithms.

Keyword

Social discrimination; Social epidemiology; Machine learning
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