Lessons learned from a sandbox experiment: Gaining experience with predictive risk modeling in a low stake environment

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Abstract

This paper outline lessons learned from a sandbox experiment as a qualitative research method used to explore how social workers navigate the potential implementation of Predictive Risk Modeling (PRM) in the future. With a dual purpose, we are investigating how researchers can make sense of a potential implementation of PRM in the future. Secondly, we are examining how social workers make sense of the practical implications in a simulated setting and low-stakes environment. Each new technology implementation warrants consideration of various investigative methods, with sandboxing being just one among many. Our sandbox featured vignettes, questionnares (N = 388), workshops (4, N = 17) and a document study (N = 1031). We conducted a study using various methods to enhance our understanding of the complex interactions between human and non-human actors in social work (Latour, 2005). This type of sensemaking has been underexplored (Meier & Ingerslev, 2023). Understanding how social workers adapt to potential changes is crucial for theory and practice (Colville et al., 2016).
Original languageEnglish
Publication date2024
Publication statusPublished - 2024
Event13th European Conference for Social Work Research: ENVISIONING FUTURE: Social Work Research and Discourse in the Age of Industry 4.0 - Radisson Blu Hotel Lietuva, Vilnius, Lithuania
Duration: 17 Apr 202419 Apr 2024
Conference number: 13
https://www.ecswr2024.eu

Conference

Conference13th European Conference for Social Work Research: ENVISIONING FUTURE: Social Work Research and Discourse in the Age of Industry 4.0
Number13
LocationRadisson Blu Hotel Lietuva
Country/TerritoryLithuania
CityVilnius
Period17/04/2419/04/24
Internet address

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