Visually Explaining Uncertain Price Predictions in Agrifood: A User-Centred Case-Study

Publication date

2022-07

Authors

Ooge, JeroenORCID 0000-0001-9820-7656ISNI 0000000524576140
Verbert, Katrien

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by

Abstract

The rise of ‘big data’ in agrifood has increased the need for decision support systems that harvest the power of artificial intelligence. While many such systems have been proposed, their uptake is limited, for example because they often lack uncertainty representations and are rarely designed in a user-centred way. We present a prototypical visual decision support system that incorporates price prediction, uncertainty, and visual analytics techniques. We evaluated our prototype with 10 participants who are active in different parts of agrifood. Through semi-structured interviews and questionnaires, we collected quantitative and qualitative data about four metrics: usability, usefulness and needs, model understanding, and trust. Our results reveal that the first three metrics can directly and indirectly affect appropriate trust, and that perception differences exist between people with diverging experience levels in predictive modelling. Overall, this suggests that user-centred approaches are key for increasing uptake of visual decision support systems in agrifood.

Keywords

decision support systems, explainable artificial intelligence, mixed-methods, thematic analysis, uncertainty, visual analytics, visualisation, Food Science, Agronomy and Crop Science, Plant Science

Citation

Ooge, J & Verbert, K 2022, 'Visually Explaining Uncertain Price Predictions in Agrifood : A User-Centred Case-Study', Agriculture (Switzerland), vol. 12, no. 7, 1024. https://doi.org/10.3390/agriculture12071024