Visualization as irritation: producing knowledge about medieval courts through uncertainty

Schwandt S, Wachter C (2024)
Frontiers in Big Data 7: 1188620.

Zeitschriftenaufsatz | Veröffentlicht | Englisch
 
Download
OA 1.65 MB
Abstract / Bemerkung
Visualizations are ubiquitous in data-driven research, serving as both tools for knowledge production and genuine means of knowledge communication. Despite criticisms targeting the alleged objectivity of visualizations in the digital humanities (DH) and reflections on how they may serve as representations of both scholarly perspective and uncertainty within the data analysis pipeline, there remains a notable scarcity of in-depth theoretical grounding for these assumptions in DH discussions. It is our understanding that only through theoretical foundations such as basic semiotic principles and perspectives on media modality one can fully assess the use and potential of visualizations for innovation in scholarly interpretation. We argue that visualizations have the capacity to “productively irritate” existing scholarly knowledge in a given research field. This does not just mean that visualizations depict patterns in datasets that seem not in line with prior research and thus stimulate deeper examination. Complementarily, “irritation” here consists of visualizations producing uncertainty about their own meaning—yet it is precisely this uncertainty in which the potential for greater insight lies. It stimulates questions about what is depicted and what is not. This turns out to be a valuable resource for scholarly interpretation, and one could argue that visualizing big data is particularly prolific in this sense, because due to their complexity researchers cannot interpret the data without visual representations. However, we argue that “productive irritation” can also happen below the level of big data. We see this potential rooted in the genuinely semiotic and semantic properties of visual media, which studies in multimodality and specifically in the field ofBildlinguistikhave carved out: a visualization's holistic overview of data patterns is juxtaposed to its semantic vagueness, which gives way to deep interpretations and multiple perspectives on that data. We elucidate this potential using examples from medieval English legal history. Visualizations of data relating to legal functions and social constellations of various people in court offer surprising insights that can lead to new knowledge through “productive irritation.”
Stichworte
uncertainty; knowledge production; visualization; semiotics; theory
Erscheinungsjahr
2024
Zeitschriftentitel
Frontiers in Big Data
Band
7
Art.-Nr.
1188620
eISSN
2624-909X
Finanzierungs-Informationen
Open-Access-Publikationskosten wurden durch die Universität Bielefeld gefördert.
Page URI
https://pub.uni-bielefeld.de/record/2989306

Zitieren

Schwandt S, Wachter C. Visualization as irritation: producing knowledge about medieval courts through uncertainty. Frontiers in Big Data. 2024;7: 1188620.
Schwandt, S., & Wachter, C. (2024). Visualization as irritation: producing knowledge about medieval courts through uncertainty. Frontiers in Big Data, 7, 1188620. https://doi.org/10.3389/fdata.2024.1188620
Schwandt, Silke, and Wachter, Christian. 2024. “Visualization as irritation: producing knowledge about medieval courts through uncertainty”. Frontiers in Big Data 7: 1188620.
Schwandt, S., and Wachter, C. (2024). Visualization as irritation: producing knowledge about medieval courts through uncertainty. Frontiers in Big Data 7:1188620.
Schwandt, S., & Wachter, C., 2024. Visualization as irritation: producing knowledge about medieval courts through uncertainty. Frontiers in Big Data, 7: 1188620.
S. Schwandt and C. Wachter, “Visualization as irritation: producing knowledge about medieval courts through uncertainty”, Frontiers in Big Data, vol. 7, 2024, : 1188620.
Schwandt, S., Wachter, C.: Visualization as irritation: producing knowledge about medieval courts through uncertainty. Frontiers in Big Data. 7, : 1188620 (2024).
Schwandt, Silke, and Wachter, Christian. “Visualization as irritation: producing knowledge about medieval courts through uncertainty”. Frontiers in Big Data 7 (2024): 1188620.
Alle Dateien verfügbar unter der/den folgenden Lizenz(en):
Creative Commons Namensnennung 4.0 International Public License (CC-BY 4.0):
Volltext(e)
Access Level
OA Open Access
Zuletzt Hochgeladen
2024-05-16T11:18:04Z
MD5 Prüfsumme
509dde1bbff5f2ed87cd537ffe02e471


Export

Markieren/ Markierung löschen
Markierte Publikationen

Open Data PUB

Web of Science

Dieser Datensatz im Web of Science®
Quellen

PMID: 38798306
PubMed | Europe PMC

Suchen in

Google Scholar