Forks over knives: Predictive inconsistency in criminal justice algorithmic risk assessment tools

Big data and algorithmic risk prediction tools promise to improve criminal justice systems by reducing human biases and inconsistencies in decision-making. Yet different, equally justifiable choices when developing, testing and deploying these socio-technical tools can lead to disparate predicted ri...

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Main Authors: GREENE, Travis, SHMUELI, Galit, FELL, Jan, LIN, Ching-Fu, LIU, Han-wei
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語言:English
出版: Institutional Knowledge at Singapore Management University 2022
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在線閱讀:https://ink.library.smu.edu.sg/sol_research/4397
https://ink.library.smu.edu.sg/context/sol_research/article/6355/viewcontent/jrsssa_185_supplement_2_s692.pdf
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spelling sg-smu-ink.sol_research-63552024-03-27T02:43:07Z Forks over knives: Predictive inconsistency in criminal justice algorithmic risk assessment tools GREENE, Travis SHMUELI, Galit FELL, Jan LIN, Ching-Fu LIU, Han-wei Big data and algorithmic risk prediction tools promise to improve criminal justice systems by reducing human biases and inconsistencies in decision-making. Yet different, equally justifiable choices when developing, testing and deploying these socio-technical tools can lead to disparate predicted risk scores for the same individual. Synthesising diverse perspectives from machine learning, statistics, sociology, criminology, law, philosophy and economics, we conceptualise this phenomenon as predictive inconsistency. We describe sources of predictive inconsistency at different stages of algorithmic risk assessment tool development and deployment and consider how future technological developments may amplify predictive inconsistency. We argue, however, that in a diverse and pluralistic society we should not expect to completely eliminate predictive inconsistency. Instead, to bolster the legal, political and scientific legitimacy of algorithmic risk prediction tools, we propose identifying and documenting relevant and reasonable ‘forking paths’ to enable quantifiable, reproducible multiverse and specification curve analyses of predictive inconsistency at the individual level. 2022-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sol_research/4397 info:doi/10.1111/rssa.12966 https://ink.library.smu.edu.sg/context/sol_research/article/6355/viewcontent/jrsssa_185_supplement_2_s692.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection Yong Pung How School Of Law eng Institutional Knowledge at Singapore Management University algorithmic risk prediction criminal justice forking paths multiverse analysis pluralism predictive inconsistency specification curve analysis Criminal Law Theory and Algorithms
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic algorithmic risk prediction
criminal justice
forking paths
multiverse analysis
pluralism
predictive inconsistency
specification curve analysis
Criminal Law
Theory and Algorithms
spellingShingle algorithmic risk prediction
criminal justice
forking paths
multiverse analysis
pluralism
predictive inconsistency
specification curve analysis
Criminal Law
Theory and Algorithms
GREENE, Travis
SHMUELI, Galit
FELL, Jan
LIN, Ching-Fu
LIU, Han-wei
Forks over knives: Predictive inconsistency in criminal justice algorithmic risk assessment tools
description Big data and algorithmic risk prediction tools promise to improve criminal justice systems by reducing human biases and inconsistencies in decision-making. Yet different, equally justifiable choices when developing, testing and deploying these socio-technical tools can lead to disparate predicted risk scores for the same individual. Synthesising diverse perspectives from machine learning, statistics, sociology, criminology, law, philosophy and economics, we conceptualise this phenomenon as predictive inconsistency. We describe sources of predictive inconsistency at different stages of algorithmic risk assessment tool development and deployment and consider how future technological developments may amplify predictive inconsistency. We argue, however, that in a diverse and pluralistic society we should not expect to completely eliminate predictive inconsistency. Instead, to bolster the legal, political and scientific legitimacy of algorithmic risk prediction tools, we propose identifying and documenting relevant and reasonable ‘forking paths’ to enable quantifiable, reproducible multiverse and specification curve analyses of predictive inconsistency at the individual level.
format text
author GREENE, Travis
SHMUELI, Galit
FELL, Jan
LIN, Ching-Fu
LIU, Han-wei
author_facet GREENE, Travis
SHMUELI, Galit
FELL, Jan
LIN, Ching-Fu
LIU, Han-wei
author_sort GREENE, Travis
title Forks over knives: Predictive inconsistency in criminal justice algorithmic risk assessment tools
title_short Forks over knives: Predictive inconsistency in criminal justice algorithmic risk assessment tools
title_full Forks over knives: Predictive inconsistency in criminal justice algorithmic risk assessment tools
title_fullStr Forks over knives: Predictive inconsistency in criminal justice algorithmic risk assessment tools
title_full_unstemmed Forks over knives: Predictive inconsistency in criminal justice algorithmic risk assessment tools
title_sort forks over knives: predictive inconsistency in criminal justice algorithmic risk assessment tools
publisher Institutional Knowledge at Singapore Management University
publishDate 2022
url https://ink.library.smu.edu.sg/sol_research/4397
https://ink.library.smu.edu.sg/context/sol_research/article/6355/viewcontent/jrsssa_185_supplement_2_s692.pdf
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