Data Quality, Mismatched Expectations, and Moving Requirements: The Challenges of User-Centred Dashboard Design
September 14, 2022 Β· Declared Dead Β· π Nordic Conference on Human-Computer Interaction
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Authors
Mohammed Alhamadi, Omar Alghamdi, Sarah Clinch, Markel Vigo
arXiv ID
2209.06363
Category
cs.HC: Human-Computer Interaction
Citations
17
Venue
Nordic Conference on Human-Computer Interaction
Last Checked
4 months ago
Abstract
Interactive information dashboards can help both specialists and the general public understand complex datasets; but interacting with these dashboards often presents users with challenges such as understanding and verifying the presented information. To overcome these challenges, developers first need to acquire a thorough understanding of user perspectives, including strategies that users take when presented with problematic dashboards. We interviewed seventeen dashboard developers to establish (i) their understanding of user problems, (ii) the adaptations introduced as a result, and (iii) whether user-tailored dashboards can cater for users' individual differences. We find that users' literacy does not typically align with that required to use dashboards, while dashboard developers struggle with keeping up with changing requirements. We also find that developers are able to propose solutions to most users' problems but not all. Encouragingly, our findings also highlight that tailoring dashboards to individual user needs is not only desirable, but also feasible. These findings inform future dashboard design recommendations that can mitigate the identified challenges including recommendations for data presentation and visual literacy.
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