From pain compliance to leverage-based control: Evidence of reduced use of force severity and injuries following police training

Author:

Huff Jessica1ORCID,Zauhar Sean2,Agniel Denis3

Affiliation:

1. Assistant Professor, University of Cincinnati , Cincinnati, Ohio , USA

2. Lieutenant, Apple Valley Police Department , Apple Valley, Minnesota , USA

3. Senior Statistician, RAND Corporation , Santa Monica, California , USA

Abstract

Abstract Training is a frequently requested response to contentious police use of force incidents. Yet limited research evaluating use of force training has been conducted and most has focussed on officer perceptions of training, as opposed to the impact of training on use of force in the field. We address this gap through evaluating a 120-h Response to Resistance and Aggression training developed and implemented by the Saint Paul Police Department. By integrating leverage-based control and de-escalation techniques, this program sought to reduce the severity of force used by police officers. Results from machine learning models indicate that training did reduce reliance on pain-compliance techniques. Adjusting for factors including encounter, subject, and officer characteristics, training was associated with an estimated 3.3 percentage point reduction in officer injuries and a 1.3 percentage point reduction in significant subject injury. These findings contribute to the evidence base surrounding effective police training programs.

Publisher

Oxford University Press (OUP)

Reference42 articles.

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2. ‘A Training Method to Improve Police Use of Force Decision Making: A Randomized Controlled Trial.’;Andersen;SAGE Open,2016

3. ‘Monitoring the Impact of Scenario-based Use-of-force Simulations on Police Heart Rate: Evaluating the Royal Canadian Mounted Police Skills Refresher Program.’;Armstrong;Criminology, Criminal Justice, Law & Society,2014

4. ‘Doubly Robust Estimation in Missing Data and Causal Inference Models.’;Bang;Biometrics,2005

5. ‘Promising Practices for De-escalation and Use-of-force Training in the Police Setting: A Narrative Review.’;Bennell;Policing,2020

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