Insight Based Method for Evaluating VR Viz
Spring 2023, Dave Song
<Key Ideas>
current visualization tool for bioinformatics research → mix feedback
The purpose of the visualization of data is to generate insights and discovery.
thus, effective data visualization → ability to generate unpredicted new insights.
visualization evaluation → done through accuracy or performance measuring on given tasks
should focus more on “recognition and quantification of insights gained from actual exploratory use of the visualizations”
<related topics>
Metrics, Heuristics, and models
evaluation
inspection of user interfaces by experts with heuristics
<Study>
insight definition should be quantifiable and reproducible for the sake of the study
insight characteristics
Definition: “An individual observation about the data by the participant, a unit of discovery”. Standard think-aloud protocol and it is feasible to notice when the user makes an insight
characteristics of insights
Observation: data observation
Time: duration taken to reach the insight
Domain value: significance of the insight. On a scale of 1 to 5. 1-2 points mean trivial observations, intermediate values (recognizing particular process) earn 3. An insight that can spark, deny, or support hypotheses earn 4 or 5.
Directed vs. unexpected
Correctness: correctness reviewed by experts
Breadth vs. Depth:
category: four categories
overview
patterns
groups
details
→ in the context of gene and bioinformatics data visualization
Key Takeaways from the research regarding collaborative evaluation
When targeting scientific data visualization, insight can be a measure of vr system’s effectiveness in presenting the data in a collaborative environment.
Different types of insights and quantifiable definitions of insight can be useful when evaluating collaborative vr user experience.