TY - JOUR
T1 - Forks Over Knives
T2 - Predictive Inconsistency in Criminal Justice Algorithmic Risk Assessment Tools
AU - Greene, Travis
AU - Shmueli, Galit
AU - Fell, Jan
AU - Lin, Ching-Fu
AU - Liu, Han-Wei
PY - 2022/12
Y1 - 2022/12
N2 - 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.
AB - 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.
KW - Algorithmic risk prediction
KW - Criminal justice
KW - Forking paths
KW - Multiverse analysis
KW - Pluralism
KW - Predictive inconsistency
KW - Specification curve analysis
KW - Algorithmic risk prediction
KW - Criminal justice
KW - Forking paths
KW - Multiverse analysis
KW - Pluralism
KW - Predictive inconsistency
KW - Specification curve analysis
U2 - 10.1111/rssa.12966
DO - 10.1111/rssa.12966
M3 - Journal article
SN - 0964-1998
VL - 185
SP - S692–S723
JO - Journal of the Royal Statistical Society, Series A (Statistics in Society)
JF - Journal of the Royal Statistical Society, Series A (Statistics in Society)
IS - Supplement 2
ER -