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Accepted for/Published in: JMIR Medical Education

Date Submitted: Aug 2, 2023
Date Accepted: Aug 8, 2023

The final, peer-reviewed published version of this preprint can be found here:

Can AI Mitigate Bias in Writing Letters of Recommendation?

Leung TI, Sagar A, Shroff S, Henry T

Can AI Mitigate Bias in Writing Letters of Recommendation?

JMIR Med Educ 2023;9:e51494

DOI: 10.2196/51494

PMID: 37610808

PMCID: 10483302

Can AI Can Mitigate Bias in Writing Letters of Recommendation?

  • Tiffany I Leung; 
  • Ankita Sagar; 
  • Swati Shroff; 
  • Tracey Henry

ABSTRACT

Letters of recommendation play a significant role in higher education and career progression, particularly for women and underrepresented groups in medicine and science. Already, there is evidence to suggest that written letters of recommendation contain language that expresses implicit bias, or unconscious bias [5,6] and that these biases occur for all recommenders regardless of the recommender’s sex. Given that all individuals have implicit biases that may influence language use, there may be opportunities to apply contemporary technologies, such as large language models or other forms of generative artificial intelligence (AI), to augment and potentially reduce implicit biases in the written language of letters of recommendation. In this Editorial, we provide a brief overview of existing literature on the manifestations of implicit bias in letters of recommendation, with a focus on academia and medical education. Then, we highlight potential opportunities and drawbacks of applying this emerging technology in augmenting the focused professional task of writing letters of recommendation. We also begin offering best practices for integrating their use into routine writing of letters of recommendation and conclude with our outlook for the future of generative AI applications in supporting this task in the future.


 Citation

Please cite as:

Leung TI, Sagar A, Shroff S, Henry T

Can AI Mitigate Bias in Writing Letters of Recommendation?

JMIR Med Educ 2023;9:e51494

DOI: 10.2196/51494

PMID: 37610808

PMCID: 10483302

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