Contextual social valences for artificial intelligence: anticipation that matters in social work
Lehtiniemi, T. (2023). Contextual social valences for artificial intelligence: anticipation that matters in social work. Information, Communication & Society, 1-16.
In pilot trials, Finnish caseworkers in child welfare services used an AI tool predicting severe risks faced by their clients. Based on interviews with the caseworkers involved, this article draws on those trials to discuss AI valences, or the range of expectations of AI’s value and performance, in social work and beyond. While AI travels across sites of application and sectors of society, its value is often expected to come from the production of anticipatory knowledge. The predictive AI tool used by Finnish caseworkers offers an example: it turned past data about clients into predictions about their future, with an aim of authorizing present interventions to optimize the future. In the pilot trials, however, AI met the practice of social work. In contrast to generic expectations of predictive performance, caseworkers had contextual expectations for AI, reflecting their situated knowledge about their field. For caseworkers, anticipation does not mean producing pieces of speculative knowledge about the future. Instead, for them, anticipation is a professional knowledge-making practice, based on intimate encounters with clients. Caseworkers therefore expect AI to produce contextually relevant information that can facilitate those interactions. This suggests that for AI developments to matter in social work, it is necessary to consider AI not as a tool that produces knowledge outcomes, but one that supports human experts’ knowledge-making processes. More broadly, as AI tools enter new sensitive areas of application, instead of expecting generic value and performance from them, careful attention should be paid on contextual AI valences.
Link to the publication: https://www.tandfonline.com/doi/full/10.1080/1369118X.2023.2234987