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Main Authors: Pierson, Emma, Shanmugam, Divya, Movva, Rajiv, Kleinberg, Jon, Agrawal, Monica, Dredze, Mark, Ferryman, Kadija, Gichoya, Judy Wawira, Jurafsky, Dan, Koh, Pang Wei, Levy, Karen, Mullainathan, Sendhil, Obermeyer, Ziad, Suresh, Harini, Vafa, Keyon
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2312.14804
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author Pierson, Emma
Shanmugam, Divya
Movva, Rajiv
Kleinberg, Jon
Agrawal, Monica
Dredze, Mark
Ferryman, Kadija
Gichoya, Judy Wawira
Jurafsky, Dan
Koh, Pang Wei
Levy, Karen
Mullainathan, Sendhil
Obermeyer, Ziad
Suresh, Harini
Vafa, Keyon
author_facet Pierson, Emma
Shanmugam, Divya
Movva, Rajiv
Kleinberg, Jon
Agrawal, Monica
Dredze, Mark
Ferryman, Kadija
Gichoya, Judy Wawira
Jurafsky, Dan
Koh, Pang Wei
Levy, Karen
Mullainathan, Sendhil
Obermeyer, Ziad
Suresh, Harini
Vafa, Keyon
contents Advances in large language models (LLMs) have driven an explosion of interest about their societal impacts. Much of the discourse around how they will impact social equity has been cautionary or negative, focusing on questions like "how might LLMs be biased and how would we mitigate those biases?" This is a vital discussion: the ways in which AI generally, and LLMs specifically, can entrench biases have been well-documented. But equally vital, and much less discussed, is the more opportunity-focused counterpoint: "what promising applications do LLMs enable that could promote equity?" If LLMs are to enable a more equitable world, it is not enough just to play defense against their biases and failure modes. We must also go on offense, applying them positively to equity-enhancing use cases to increase opportunities for underserved groups and reduce societal discrimination. There are many choices which determine the impact of AI, and a fundamental choice very early in the pipeline is the problems we choose to apply it to. If we focus only later in the pipeline -- making LLMs marginally more fair as they facilitate use cases which intrinsically entrench power -- we will miss an important opportunity to guide them to equitable impacts. Here, we highlight the emerging potential of LLMs to promote equity by presenting four newly possible, promising research directions, while keeping risks and cautionary points in clear view.
format Preprint
id arxiv_https___arxiv_org_abs_2312_14804
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Using large language models to promote health equity
Pierson, Emma
Shanmugam, Divya
Movva, Rajiv
Kleinberg, Jon
Agrawal, Monica
Dredze, Mark
Ferryman, Kadija
Gichoya, Judy Wawira
Jurafsky, Dan
Koh, Pang Wei
Levy, Karen
Mullainathan, Sendhil
Obermeyer, Ziad
Suresh, Harini
Vafa, Keyon
Computers and Society
Advances in large language models (LLMs) have driven an explosion of interest about their societal impacts. Much of the discourse around how they will impact social equity has been cautionary or negative, focusing on questions like "how might LLMs be biased and how would we mitigate those biases?" This is a vital discussion: the ways in which AI generally, and LLMs specifically, can entrench biases have been well-documented. But equally vital, and much less discussed, is the more opportunity-focused counterpoint: "what promising applications do LLMs enable that could promote equity?" If LLMs are to enable a more equitable world, it is not enough just to play defense against their biases and failure modes. We must also go on offense, applying them positively to equity-enhancing use cases to increase opportunities for underserved groups and reduce societal discrimination. There are many choices which determine the impact of AI, and a fundamental choice very early in the pipeline is the problems we choose to apply it to. If we focus only later in the pipeline -- making LLMs marginally more fair as they facilitate use cases which intrinsically entrench power -- we will miss an important opportunity to guide them to equitable impacts. Here, we highlight the emerging potential of LLMs to promote equity by presenting four newly possible, promising research directions, while keeping risks and cautionary points in clear view.
title Using large language models to promote health equity
topic Computers and Society
url https://arxiv.org/abs/2312.14804