Exploring NWS forecasters' assessment of AI guidance trustworthiness

As artificial intelligence (AI) methods are increasingly used to develop new guidance intended for operational use by forecasters, it is critical to evaluate whether forecasters deem the guidance trustworthy. Past trust-related AI research suggests that certain attributes (e.g., understanding how the AI was trained, interactivity, and performance) contribute to users perceiving the AI as trustworthy. However, little research has been done to examine the role of these and other attributes for weather forecasters. In this study, we conducted 16 online interviews with National Weather Service (NWS) forecasters to examine (i) how they make guidance use decisions and (ii) how the AI model technique used, training, input variables, performance, and developers as well as interacting with the model output influenced their assessments of trustworthiness of new guidance. The interviews pertained to either a random forest model predicting the probability severe hail or a 2D convolutional neural network model predicting the probability of storm mode. When taken as a whole, our findings illustrate how forecasters' assessment of AI guidance trustworthiness is a process that occurs over time rather than automatically or at first introduction. We recommend developers center end users when creating new AI guidance tools, making end users integral to their thinking and efforts. This approach is essential for the development of useful and used tools. The details of these findings can help AI developers understand how forecasters perceive AI guidance and inform AI development and refinement efforts.

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Related Links

Related Dataset #1 : Interviews with NWS Forecasters related to severe weather and new artificial intelligence/machine learning (AI/ML) guidance predicting severe hail and storm mode: Interview materials for "AI/ML" version

Related Preprint #1 : Metrics for Explainable AI: Challenges and Prospects

Related Preprint #2 : Explanation in Human-AI Systems: A Literature Meta-Review, Synopsis of Key Ideas and Publications, and Bibliography for Explainable AI

Related Preprint #3 : Formalizing Trust in Artificial Intelligence: Prerequisites, Causes and Goals of Human Trust in AI

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Author Cains, Mariana
Wirz, Christopher D.
Demuth, Julie L.
Bostrom, A.
Gagne, David John
McGovern, A.
Sobash, Ryan A.
Madlambayan, D.
Publisher UCAR/NCAR - Library
Publication Date 2024-08-01T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Topic Category geoscientificInformation
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Metadata Date 2025-07-10T20:00:07.496428
Metadata Record Identifier edu.ucar.opensky::articles:27447
Metadata Language eng; USA
Suggested Citation Cains, Mariana, Wirz, Christopher D., Demuth, Julie L., Bostrom, A., Gagne, David John, McGovern, A., Sobash, Ryan A., Madlambayan, D.. (2024). Exploring NWS forecasters' assessment of AI guidance trustworthiness. UCAR/NCAR - Library. https://n2t.org/ark:/85065/d7v1292m. Accessed 09 August 2025.

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