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Hauptverfasser: Ungless, Eddie L., Vitsakis, Nikolas, Talat, Zeerak, Garforth, James, Ross, Björn, Onken, Arno, Kasirzadeh, Atoosa, Birch, Alexandra
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2412.16022
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author Ungless, Eddie L.
Vitsakis, Nikolas
Talat, Zeerak
Garforth, James
Ross, Björn
Onken, Arno
Kasirzadeh, Atoosa
Birch, Alexandra
author_facet Ungless, Eddie L.
Vitsakis, Nikolas
Talat, Zeerak
Garforth, James
Ross, Björn
Onken, Arno
Kasirzadeh, Atoosa
Birch, Alexandra
contents There is a significant body of work looking at the ethical considerations of large language models (LLMs): critiquing tools to measure performance and harms; proposing toolkits to aid in ideation; discussing the risks to workers; considering legislation around privacy and security etc. As yet there is no work that integrates these resources into a single practical guide that focuses on LLMs; we attempt this ambitious goal. We introduce 'LLM Ethics Whitepaper', which we provide as an open and living resource for NLP practitioners, and those tasked with evaluating the ethical implications of others' work. Our goal is to translate ethics literature into concrete recommendations and provocations for thinking with clear first steps, aimed at computer scientists. 'LLM Ethics Whitepaper' distils a thorough literature review into clear Do's and Don'ts, which we present also in this paper. We likewise identify useful toolkits to support ethical work. We refer the interested reader to the full LLM Ethics Whitepaper, which provides a succinct discussion of ethical considerations at each stage in a project lifecycle, as well as citations for the hundreds of papers from which we drew our recommendations. The present paper can be thought of as a pocket guide to conducting ethical research with LLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2412_16022
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The Only Way is Ethics: A Guide to Ethical Research with Large Language Models
Ungless, Eddie L.
Vitsakis, Nikolas
Talat, Zeerak
Garforth, James
Ross, Björn
Onken, Arno
Kasirzadeh, Atoosa
Birch, Alexandra
Computation and Language
Artificial Intelligence
There is a significant body of work looking at the ethical considerations of large language models (LLMs): critiquing tools to measure performance and harms; proposing toolkits to aid in ideation; discussing the risks to workers; considering legislation around privacy and security etc. As yet there is no work that integrates these resources into a single practical guide that focuses on LLMs; we attempt this ambitious goal. We introduce 'LLM Ethics Whitepaper', which we provide as an open and living resource for NLP practitioners, and those tasked with evaluating the ethical implications of others' work. Our goal is to translate ethics literature into concrete recommendations and provocations for thinking with clear first steps, aimed at computer scientists. 'LLM Ethics Whitepaper' distils a thorough literature review into clear Do's and Don'ts, which we present also in this paper. We likewise identify useful toolkits to support ethical work. We refer the interested reader to the full LLM Ethics Whitepaper, which provides a succinct discussion of ethical considerations at each stage in a project lifecycle, as well as citations for the hundreds of papers from which we drew our recommendations. The present paper can be thought of as a pocket guide to conducting ethical research with LLMs.
title The Only Way is Ethics: A Guide to Ethical Research with Large Language Models
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2412.16022