Towards User-Centred Design of AI-Assisted Decision-Making in Law Enforcement
By: Vesna Nowack , Dalal Alrajeh , Carolina Gutierrez Muñoz and more
Potential Business Impact:
Helps police find and stop crimes faster.
Artificial Intelligence (AI) has become an important part of our everyday lives, yet user requirements for designing AI-assisted systems in law enforcement remain unclear. To address this gap, we conducted qualitative research on decision-making within a law enforcement agency. Our study aimed to identify limitations of existing practices, explore user requirements and understand the responsibilities that humans expect to undertake in these systems. Participants in our study highlighted the need for a system capable of processing and analysing large volumes of data efficiently to help in crime detection and prevention. Additionally, the system should satisfy requirements for scalability, accuracy, justification, trustworthiness and adaptability to be adopted in this domain. Participants also emphasised the importance of having end users review the input data that might be challenging for AI to interpret, and validate the generated output to ensure the system's accuracy. To keep up with the evolving nature of the law enforcement domain, end users need to help the system adapt to the changes in criminal behaviour and government guidance, and technical experts need to regularly oversee and monitor the system. Furthermore, user-friendly human interaction with the system is essential for its adoption and some of the participants confirmed they would be happy to be in the loop and provide necessary feedback that the system can learn from. Finally, we argue that it is very unlikely that the system will ever achieve full automation due to the dynamic and complex nature of the law enforcement domain.
Similar Papers
Concerning the Responsible Use of AI in the US Criminal Justice System
Computers and Society
Makes AI in courts explain its decisions fairly.
Ethical Challenges of Using Artificial Intelligence in Judiciary
Machine Learning (CS)
Helps courts make fair decisions faster and cheaper.
Designing Human-AI System for Legal Research: A Case Study of Precedent Search in Chinese Law
Human-Computer Interaction
Helps lawyers find important past cases faster.