Communicating qualitative uncertainty in data visualization
Two cases from within the digital humanities
Qualitative uncertainty refers to the implicit and underlying issues that are imbued in data, such as the
circumstances of its collection, its storage or even biases and assumptions made by its authors. Although such uncertainty can
jeopardize the validity of the data analysis, it is often overlooked in visualizations, due to it being indirect and
non-quantifiable. In this paper we present two case studies within the digital humanities in which we examined how to integrate
uncertainty in our visualization designs. Using these cases as a starting point we propose four considerations for data
visualization research in relation to indirect, qualitative uncertainty: (1) we suggest that uncertainty in visualization should
be examined within its socio-technological context, (2) we propose the use of interaction design patterns to design for it, (3) we
argue for more attention to be paid to the data generation process in the humanities, and (4) we call for the further development
of participatory activities specifically catered for understanding qualitative uncertainties. While our findings are grounded in
the humanities, we believe that these considerations can be beneficial for other settings where indirect uncertainty plays an
equally prevalent role.
Article outline
- 1.Introduction
- 2.Archaeological settlement data
- 3.Synthesizing interdisciplinary socio-ecological data
- 4.Towards communicating qualitative uncertainty in data visualization
- 5.Conclusion
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References