Improving Sexual Identity Measures in Health Disparity Studies with Machine Learning and Resampling
Abstract Number:
2296
Submission Type:
Contributed Abstract
Contributed Abstract Type:
Paper
Participants:
Rona Hu (1), Brady West (1)
Institutions:
(1) Institute for Social Research, University of Michigan, Ann Arbor, MI, US
Co-Author:
Brady West
Institute for Social Research, University of Michigan
First Author:
Rona Hu
Institute for Social Research, University of Michigan
Presenting Author:
Abstract Text:
Survey research on sexual identity often categorizes respondents as heterosexual, homosexual, and bisexual, but may miss nuanced identities. Prior work has shown that introducing a "something else" response option can affect health disparity estimates. However, many surveys lack this option. We propose a machine learning approach to infer "something else" responses in existing surveys without this option. Leveraging a split-ballot experiment in the 2015-2019 National Survey of Family Growth, we use the half-sample including "something else" as a training dataset and a set of supervised machine learning algorithms to develop a classifier for sexual identity. We then use the half-sample excluding "something else" as a test dataset, predicting responses on the four-category version of sexual identity and computing revised estimates of disparities based on these new predictions. We repeat this process using bootstrap resampling to generate an empirical distribution of revised disparity estimates, comparing the estimates to those based on the original half-sample used for training. We conclude with implications of this work for future surveys measuring sexual identity.
Keywords:
Sexual Identity Measurement|Machine Learning|Health Disparity Estimates|Survey Research|National Survey of Family Growth (NSFG)|Bootstrap Resampling
Sponsors:
Survey Research Methods Section
Tracks:
Data Analysis/Modeling
Can this be considered for alternate subtype?
Yes
Are you interested in volunteering to serve as a session chair?
No
I have read and understand that JSM participants must abide by the Participant Guidelines.
Yes
I understand that JSM participants must register and pay the appropriate registration fee by June 1, 2024. The registration fee is non-refundable.
I understand
You have unsaved changes.