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Comparing Conventional and Machine-Learning Approaches to Risk Assessment in Domestic Abuse Cases

Author

Listed:
  • Jeffrey Grogger

    (University of Chicago - Harris School of Public Policy; NBER)

  • Sean Gupta

    (London School of Economics and Political Science - Center for Economic Performance)

  • Ria Ivandic

    (London School of Economics and Political Science - Center for Economic Performance)

  • Tom Kirchmaier

    (London School of Economics and Political Science - Center for Economic Performance)

Abstract

We compare predictions from a conventional protocol-based approach to risk assessment with those based on a machine-learning approach. We first show that the conventional predictions are less accurate than, and have similar rates of negative prediction error as, a simple Bayes classifier that makes use only of the base failure rate. Machine learning algorithms based on the underlying risk assessment questionnaire do better under the assumption that negative prediction errors are more costly than positive prediction errors. Machine learning models based on two-year criminal histories do even better. Indeed, adding the protocol-based features to the criminal histories adds little to the predictive adequacy of the model. We suggest using the predictions based on criminal histories to prioritize incoming calls for service, and devising a more sensitive instrument to distinguish true from false positives that result from this initial screening.

Suggested Citation

  • Jeffrey Grogger & Sean Gupta & Ria Ivandic & Tom Kirchmaier, 2021. "Comparing Conventional and Machine-Learning Approaches to Risk Assessment in Domestic Abuse Cases," Working Papers 2021-01, Becker Friedman Institute for Research In Economics.
  • Handle: RePEc:bfi:wpaper:2021-01
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    Cited by:

    1. Netta Barak‐Corren & Yoav Kan‐Tor & Nelson Tebbe, 2022. "Examining the effects of antidiscrimination laws on children in the foster care and adoption systems," Journal of Empirical Legal Studies, John Wiley & Sons, vol. 19(4), pages 1003-1066, December.
    2. Ivandić, Ria & Kirchmaier, Tom & Saeidi, Yasaman & Torres Blas, Neus, 2024. "Football, alcohol, and domestic abuse," Journal of Public Economics, Elsevier, vol. 230(C).
    3. Sarah Bankins & Paul Formosa, 2023. "The Ethical Implications of Artificial Intelligence (AI) For Meaningful Work," Journal of Business Ethics, Springer, vol. 185(4), pages 725-740, July.
    4. Sofia Amaral & Gordon B. Dahl & Victoria Endl-Geyer & Timo Hener & Helmut Rainer, 2023. "Deterrence or Backlash? Arrests and the Dynamics of Domestic Violence," NBER Working Papers 30855, National Bureau of Economic Research, Inc.
    5. Black, Dan A. & Grogger, Jeffrey & Kirchmaier, Tom & Sanders, Koen, 2023. "Criminal charges, risk assessment and violent recidivism in cases of domestic abuse," LSE Research Online Documents on Economics 121374, London School of Economics and Political Science, LSE Library.
    6. Markey, Patrick M. & Goldman, Samantha & Dapice, Jennie & Saj, Sofia & Ceynek, Saadet & Nicolas, Tia & Trollip, Lila, 2025. "Artificial intelligence as a tool for detecting deception in 911 homicide calls," Journal of Criminal Justice, Elsevier, vol. 96(C).

    More about this item

    JEL classification:

    • K14 - Law and Economics - - Basic Areas of Law - - - Criminal Law
    • K36 - Law and Economics - - Other Substantive Areas of Law - - - Family and Personal Law

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