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Stephen R. Pfohl

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A Toolbox for Surfacing Health Equity Harms and Biases in Large Language Models

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Mar 18, 2024
Stephen R. Pfohl, Heather Cole-Lewis, Rory Sayres, Darlene Neal, Mercy Asiedu, Awa Dieng, Nenad Tomasev, Qazi Mamunur Rashid, Shekoofeh Azizi, Negar Rostamzadeh, Liam G. McCoy, Leo Anthony Celi, Yun Liu, Mike Schaekermann, Alanna Walton, Alicia Parrish, Chirag Nagpal, Preeti Singh, Akeiylah Dewitt, Philip Mansfield, Sushant Prakash, Katherine Heller, Alan Karthikesalingam, Christopher Semturs, Joelle Barral, Greg Corrado, Yossi Matias, Jamila Smith-Loud, Ivor Horn, Karan Singhal

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Proxy Methods for Domain Adaptation

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Mar 12, 2024
Katherine Tsai, Stephen R. Pfohl, Olawale Salaudeen, Nicole Chiou, Matt J. Kusner, Alexander D'Amour, Sanmi Koyejo, Arthur Gretton

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Adapting to Latent Subgroup Shifts via Concepts and Proxies

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Dec 21, 2022
Ibrahim Alabdulmohsin, Nicole Chiou, Alexander D'Amour, Arthur Gretton, Sanmi Koyejo, Matt J. Kusner, Stephen R. Pfohl, Olawale Salaudeen, Jessica Schrouff, Katherine Tsai

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Net benefit, calibration, threshold selection, and training objectives for algorithmic fairness in healthcare

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Feb 03, 2022
Stephen R. Pfohl, Yizhe Xu, Agata Foryciarz, Nikolaos Ignatiadis, Julian Genkins, Nigam H. Shah

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A comparison of approaches to improve worst-case predictive model performance over patient subpopulations

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Aug 27, 2021
Stephen R. Pfohl, Haoran Zhang, Yizhe Xu, Agata Foryciarz, Marzyeh Ghassemi, Nigam H. Shah

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An Empirical Characterization of Fair Machine Learning For Clinical Risk Prediction

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Jul 20, 2020
Stephen R. Pfohl, Agata Foryciarz, Nigam H. Shah

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Language Models Are An Effective Patient Representation Learning Technique For Electronic Health Record Data

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Jan 06, 2020
Ethan Steinberg, Ken Jung, Jason A. Fries, Conor K. Corbin, Stephen R. Pfohl, Nigam H. Shah

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Federated and Differentially Private Learning for Electronic Health Records

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Nov 13, 2019
Stephen R. Pfohl, Andrew M. Dai, Katherine Heller

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