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Co-adaptive visual data analysis and guidance processes
- Publication Year :
- 2021
-
Abstract
- Mixed-initiative visual data analysis processes are characterized by the co-adaptation of users and systems over time. As the analysis progresses, both actors – users and systems – gather information, update their analysis behavior, and work on different tasks towards their respective goals. In this paper, we contribute a multigranular model of co-adaptive visual analysis that is centered around incremental learning goals derived from a hierarchical taxonomy of learning goals from pedagogy. Our model captures how both actors adapt their data-, task-, and user/system-models over time. We characterize interaction patterns in terms of the dynamics of learning and teaching that drive adaptation. To demonstrate our model’s applicability, we outline aspects of co-adaptation in related models of visual analytics and highlight co-adaptation in existing applications. We further postulate a set of expectations towards adaptation in mixed-initiative processes and identify open research questions and opportunities for future work in co-adaptation.
- Subjects :
- Visual analytics
1707 Computer Vision and Pattern Recognition
Computer science
10009 Department of Informatics
11476 Digital Society Initiative
General Engineering
000 Computer science, knowledge & systems
Computer Graphics and Computer-Aided Design
1704 Computer Graphics and Computer-Aided Design
Task (project management)
Human-Computer Interaction
1712 Software
1709 Human-Computer Interaction
Open research
Human–computer interaction
Dynamics (music)
Taxonomy (general)
Incremental learning
2200 General Engineering
1711 Signal Processing
Adaptation (computer science)
Set (psychology)
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....d77cfd4c3f00d8c028725019b9aab005