Foundation Models at Work: Fine-Tuning for Fairness in Algorithmic Hiring
Korkmaz, Buse Sibel, Nair, Rahul, Daly, Elizabeth M., Anagnostopoulos, Evangelos, Varytimidis, Christos, Chanona, Antonio del Rio
–arXiv.org Artificial Intelligence
Foundation models require fine-tuning to ensure their generative outputs align with intended results for specific tasks. Automating this fine-tuning process is challenging, as it typically needs human feedback that can be expensive to acquire. We present AutoRefine, a method that leverages reinforcement learning for targeted fine-tuning, utilizing direct feedback from measurable performance improvements in specific downstream tasks. We demonstrate the method for a problem arising in algorithmic hiring platforms where linguistic biases influence a recommendation system. In this setting, a generative model seeks to rewrite given job specifications to receive more diverse candidate matches from a recommendation engine which matches jobs to candidates. Our model detects and regulates biases in job descriptions to meet diversity and fairness criteria. The experiments on a public hiring dataset and a real-world hiring platform showcase how large language models can assist in identifying and mitigation biases in the real world.
arXiv.org Artificial Intelligence
Jan-13-2025
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- North America > United States > New York (0.28)
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- Research Report > New Finding (0.67)
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